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yap-6.3/packages/ProbLog/problog.yap
2016-06-02 10:53:36 +01:00

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Prolog

%%% -*- Mode: Prolog; -*-
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
% $Date: 2011-12-08 16:20:16 +0100 (Thu, 08 Dec 2011) $
% $Revision: 6775 $
%
% This file is part of ProbLog
% http://dtai.cs.kuleuven.be/problog
%
% ProbLog was developed at Katholieke Universiteit Leuven
%
% Copyright 2008, 2009, 2010
% Katholieke Universiteit Leuven
%
% Main authors of this file:
% Angelika Kimmig, Vitor Santos Costa, Bernd Gutmann,
% Theofrastos Mantadelis, Guy Van den Broeck
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
% Artistic License 2.0
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%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% ProbLog inference
%
% assumes probabilistic facts as Prob::Fact and clauses in normal Prolog format
%
% provides following inference modes (16/12/2008):
% - approximation with interval width Delta (IJCAI07): problog_delta(+Query,+Delta,-Low,-High,-Status)
% - bounds based on single probability threshold: problog_threshold(+Query,+Threshold,-Low,-High,-Status)
% - as above, but lower bound only: problog_low(+Query,+Threshold,-Low,-Status)
% - lower bound based on K most likely proofs: problog_kbest(+Query,+K,-Low,-Status)
% - explanation probability (ECML07): problog_max(+Query,-Prob,-FactsUsed)
% - exact probability: problog_exact(+Query,-Prob,-Status)
% - sampling: problog_montecarlo(+Query,+Delta,-Prob)
%
%
% angelika.kimmig@cs.kuleuven.be
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
/**
@defgroup ProbLog1 The Leuven ProbLog1 System
@ingroup packages
@brief This document is intended as a user guide for the users of ProbLog. ProbLog is a probabilistic Prolog, a probabilistic logic programming language, which is integrated in YAP-Prolog.
## Installing ProbLog
### Requirements
For installing and running ProbLog, the following are required:
+ a reasonable up-to-date computer, running Linux or Mac OS
+ YAP Prolog 5.1.3 (for Mac OS the more recent version 5.1.4 is needed) or YAP-6
### Download
To install ProbLog1, it is first necessary to download SimpleCUDD or CUDD. YAP Prolog also needs to be downloaded if it is not already installed on the machine
For downloading SimpleCUDD, go to:
+ http://www.cs.kuleuven.be/$sim$theo/tools/SimpleCUDD.tar.gz
You can also use the CUDD interface package in YAP. You will need to
1. If a Fedora user, CUDD is just available.
2. If a Mac user, there is a ports package.
3. Otherwise, you can obtain the version at . This version compiles under WIN32.
Last, when you configure YAP you need to add the options --with-cidd --enable-bddlib. Binary distributed versions already have the interface.
## Running ProbLog
To use ProbLog, the ProbLog module has to be loaded at the top of your Prolog programs. This is done with the following statement:
~~~~
:- use_module(library(problog)).
~~~~
Similarly, to compile the ProbLog learning module, use:
~~~~
:- use_module(library(problog_learning)).
~~~~
or
~~~~
:- use_module(library(problog_learning_lbdd)).
~~~~
## Encoding Probabilistic Facts
A probabilistic fact is encoded in ProbLog by preceding a predicate with a probability value. For example:
~~~~
0.5::heads(_).
~~~~
encodes the fact that there's 50% chance of getting heads when tossing an unbiassed coin.
### Encoding Parameter Learning Facts
Instead of probabilities every fact has a t( ) prefix. The t stands for tunable and indicate that ProbLog should learn the probability. The number between the parentheses indicates the ground truth probability. It is ignored by the learning algorithm and if you do not know the ground truth, you can write t(_). The ground truth is used after learning to estimate the distance of the learned model parameters to the ground truth model parameters. For example:
~~~~
t(0.5)::heads(_).
~~~~
*
/** @defgroup ProbLogPredicates ProbLog Predicates
@ingroup ProbLog1
This chapter describes the predicates defined by ProbLog for evaluating the probability of queries.
In the description of the arguments of functors the following notation will be used:
+ a preceding plus sign will denote an argument as an "input argument" - it cannot be a free variable at the time of the call
+ a preceding minus sign will denote an "output argument"
+ an argument with no preceding symbol can be used in both ways
@{
/**
* @pred problog_max(+G, -Prob, -FactsUsed)
*
This predicate returns the most likely explanation of proving the goal G and the facts used in achieving this explanation.
*/
/**
* @pred problog_exact(+G, -Prob, -Status)
*
This predicate returns the exact total probability of achieving the goal G and the status of the query.
*/
/**
* @pred problog_kbest(+G, +K, -Prob, -Status)
*
This predicate returns the sum of the probabilities of the best K proofs of achieving the goal G and the status of the query.
*/
/**
* @pred problog_montecarlo(+G, +Interval_width, -Prob)
*
This predicate approximates the probability of achieving the goal G by using a Monte Carlo approach, with 95% confidence in the given interval width.
*/
/**
* @pred problog_delta(+G , +Interval_width, -Bound_low, -Bound_up, -Status)
*
This predicate returns the lower and upper bound of the probability of achieving the goal G by using an iterative
deepening approach with the given interval width.
*/
/**
* @pred problog_threshold(+G , +Prob, -Bound_low, -Bound_up, -Status)
*
This predicate returns the lower and upper bound of the probability of achieving the goal G obtained by cutting the sld tree at the given probability for each branch.
*/
/**
* @pred problog_low(+G, +Prob, -Bound_low, -Status)
*
This predicate returns the lower bound of the probability of achieving the goal G obtained by cutting the sld tree at the given probability for each branch.
*/
%% @}
/**
@defgroup ProbLogParameterLearning ProbLog Parameter Learning Predicates
@ingroup ProbLog1
@{
*/
/**
* @pred example(+N, +Q, +Prob)
*
This predicate specifies an example. Every example has as input a unique identifier (N), a query (Q) and a probability (Prob) associated with it.
Instead of queries, you can also give proofs as training example. They are encoded as the conjunction of the probabilistic facts used in the proof.
*/
/**
* @pred test_example(+N, +Q, +Prob)
*
This predicate specifies a test example. Every test example has as input a unique identifier (N), a query (Q) and a probability (Prob) associated with it.
Test examples are ignored during learning but are used afterwards to check the performance of the model. The ID namespace is shared between the test examples and the training examples and you may only reuse an ID if the queries are identical.
*/
/**
* @pred do_learning(+N).
*
Starts the learning algorithm with N iterations.
*/
/**
* @pred do_learning(+N, +Epsilon).
*
The output is created in the output subfolder of the current folder where YAP was started. There you will find the file log.dat which contains MSE on training and test set for every iteration, the timings, and some metrics on the gradient in CSV format. The files factprobs_N.pl contain the fact probabilities after the Nth iteration and the files predictions_N.pl contain the estimated probabilities for each training and test example - per default these file are generated every 5th iteration only.
1
Starts the learning algorithm. The learning will stop after N iterations or if the difference of the Mean Squared Error (MSE) between two iterations gets smaller than Epsilon - depending on what happens first.
*/
%% @}
/** @defgroup ProbLogMiscellaneous ProbLog Miscellaneous Predicates
@ingroup ProbLog1
@{
Both the learning and the inference module have various parameters, or flags, that can be adjusted by the user.
The following predicates are defined by ProbLog to access and set these flags.
*/
/**
* @pred problog_flags
*
This predicate lists all the flags name, value, domain and description.
*/
/** @pred problog_flag(+Name, -Value)
This predicate gives the value of the flag with the specified name. The supported flags are:
+ use_db_trie
Flag telling whether to use the builtin trie to trie transformation.
The possible values for this flag are true or false.
+ db_trie_opt_lvl
Sets the optimization level for the trie to trie transformation
The possible values for this flag are any integer
+ compare_opt_lvl
Flag telling whether to use comparison mode for the optimization level.
The possible values for this flag are true or false.
+ db_min_prefix
Sets the minimum size of the prefix for dbtrie to optimize.
The possible values for this flag are any integer
+ use_naive_trie
Flag telling whether to use the naive algorithm to generate bdd scripts.
The possible values for this flag are true or false.
+ use_old_trie
Flag telling whether to use the old not nested trie to trie transformation.
The possible values for this flag are true or false.
+ use_dec_trie
Flag telling whether to use the decomposition method.
The possible values for this flag are true or false.
+ subset_check
Flag telling whether to perform subset check in nested tries.
The possible values for this flag are true or false.
+ deref_terms
Flag telling whether to dereference BDD terms after their last use.
The possible values for this flag are true or false.
+ trie_preprocess
Flag telling whether to perform a preprocess step to nested tries.
The possible values for this flag are true or false.
+ refine_anclst
Flag telling whether to refine the ancestor list with their children.
The possible values for this flag are true or false.
+ anclst_represent
Flag that sets the representation of the ancestor list.
The possible values for this flag are list or integer
+ max_depth
Sets the maximum proof depth.
The possible values for this flag are any integer.
+ retain_tables
Flag telling whether to retain tables after the query.
The possible values for this flag are true or false.
+ mc_batchsize
Flag related to Monte Carlo Sampling that sets the number of samples before update.
The possible values for this flag are any integer greater than zero.
+ min_mc_samples
Flag related to Monte Carlo Sampling that sets the minimum number of samples before convergence. The possible values for this flag are any integer greater than or equal to zero.
+ max_mc_samples
Flag related to Monte Carlo Sampling that sets the maximum number of samples waiting to converge.
The possible values for this flag are any integer greater than or equal to zero.
+ randomizer
Flag related to Monte Carlo Sampling telling whether the random numbers are repeatable or not.
The possible values for this flag are repeatable or nonrepeatable.
+ search_method
Flag related to DNF Monte Carlo Sampling that sets the search method for picking the proof.
The possible values for this flag are linear or binary.
+ represent_world
Flag related to Monte Carlo Sampling that sets the structure that represents sampled world.
The possible values for this flag are list, record, array or hash_table
+ first_threshold
Flag related to inference that sets the starting threshold of iterative deepening.
The possible values for this flag are a number in the interval (0,1).
+ last_threshold
Flag related to inference that sets the stopping threshold of iterative deepening.
The possible values for this flag are a number in the interval (0,1).
+ id_stepsize
Flag related to inference that sets the threshold shrinking factor of iterative deepening.
The possible values for this flag are a number in the interval [0,1].
+ prunecheck
Flag related to inference telling whether to stop derivations including all facts of known proofs.
The possible values for this flag are on or off.
+ maxsteps
Flag related to inference that sets the max. number of prob. steps per derivation.
The possible values for this flag are any integer greater than zero.
+ mc_logfile
Flag related to MCMC that sets the logfile for montecarlo.
The possible values for this flag are any valid filename.
+ bdd_time
Flag related to BDD that sets the BDD computation timeout in seconds.
The possible values for this flag are any integer greater than zero.
+ bdd_par_file
Flag related to BDD that sets the file for BDD variable parameters.
The possible values for this flag are any valid filename.
+ bdd_result
Flag related to BDD that sets the file to store result calculated from BDD.
The possible values for this flag are any valid filename.
+ bdd_file
Flag related to BDD that sets the file for the BDD script.
The possible values for this flag are any valid filename.
+ save_bdd
Flag related to BDD telling whether to save BDD files for (last) lower bound.
The possible values for this flag are true or false.
+ dynamic_reorder
Flag related to BDD telling whether to use dynamic re-ordering for BDD.
The possible values for this flag are true or false.
+ bdd_static_order
Flag related to BDD telling whether to use static order.
The possible values for this flag are true or false.
+ static_order_file
Flag related to BDD that sets the file for BDD static order.
The possible values for this flag are any valid filename.
+ verbose
Flag telling whether to output intermediate information.
The possible values for this flag are true or false.
+ show_proofs
Flag telling whether to output proofs.
The possible values for this flag are true or false.
+ triedump
Flag telling whether to generate the file: trie_file containing the trie structure.
The possible values for this flag are true or false.
+ dir
Flag telling the location of the output files directory.
The possible values for this flag are any valid directory name.
*/
/** @pred set_problog_flag(+Name, +Value)
the predicate sets the value of the given flag. The supported flags are the ones listed in above
*/
/** @pred learning_flags
the predicate sets the value of the given flag. The supported flags are the ones listed in above
*/
/** @pred learning_flag(+Name, -Value)
This predicate gives the value of the learning flag with the specified name. The supported flags are:
+ output_directory
Flag setting the directory where to store results.
The possible values for this flag are any valid path name.
+ query_directory
Flag setting the directory where to store BDD files.
The possible values for this flag are any valid path name.
+ verbosity_level
Flag telling how much output shall be given.
The possible values for this flag are an integer between 0 and 5 (0=nothing, 5=all).
+ reuse_initialized_bdds
Flag telling whether to reuse BDDs from previous runs.
The possible values for this flag are true or false.
+ rebuild_bdds
Flag telling whether to rebuild BDDs every nth iteration.
The possible values for this flag are any integer greater or equal to zero (0=never).
+ check_duplicate_bdds
Flag telling whether to store intermediate results in hash table.
The possible values for this flag are true or false.
+ init_method
Flag setting the ProbLog predicate to search proofs.
The possible values for this flag are of the form: (+Query,-P,+BDDFile,+ProbFile,+Call). For example: A,B,C,D,problog_kbest_save(A,100,B,E,C,D)
+ probability_initializer
Flag setting the ProbLog predicate to initialize probabilities.
The possible values for this flag are of the form: (+FactID,-P,+Call). For example: A,B,random_probability(A,B)
+ log_frequency
Flag telling whether to log results every nth iteration.
The possible values for this flag are any integer greater than zero.
+ alpha
Flag setting the weight of negative examples.
The possible values for this flag are number or "auto" (auto=n_p/n_n).
+ slope
Flag setting the slope of the sigmoid function.
The possible values for this flag are any real number greater than zero.
+ learning_rate
Flag setting the default Learning rate (if line_search=false)
The possible values for this flag are any number greater than zero or "examples``
+ line_search
Flag telling whether to use line search to estimate the learning rate.
The possible values for this flag are true or false.
+ line_search_tau
Flag setting the Tau value for line search.
The possible values for this flag are a number in the interval (0,1).
+ line_search_tolerance
Flag setting the tolerance value for line search.
The possible values for this flag are any number greater than zero.
+ line_search_interval
Flag setting the interval for line search.
*/
%% @}
:- module(problog, [problog_koptimal/3,
problog_koptimal/4,
problog_delta/5,
problog_threshold/5,
problog_low/4,
problog_kbest/4,
problog_kbest_lbdd/4,
problog_kbest_save/6,
problog_max/3,
problog_kbest_explanations/3,
problog_exact/3,
problog_exact_lbdd/3,
problog_kbest_lbdd/4,
problog_all_explanations/2,
problog_all_explanations_unsorted/2,
problog_exact_save/5,
problog_montecarlo/3,
problog_dnf_sampling/3,
problog_answers/2,
problog_kbest_answers/3,
problog_table/1,
clear_retained_tables/0,
problog_neg/1,
get_fact_probability/2,
set_fact_probability/2,
get_continuous_fact_parameters/2,
set_continuous_fact_parameters/2,
get_fact/2,
tunable_fact/2,
tunable_continuous_fact/2,
continuous_fact/1,
non_ground_fact/1,
export_facts/1,
problog_help/0,
problog_version/0,
show_inference/0,
problog_dir/1,
set_problog_flag/2,
problog_flag/2,
problog_flags/0,
problog_flags/1,
reset_problog_flags/0,
problog_assert/1,
problog_assert/2,
problog_retractall/1,
problog_statistics/2,
problog_statistics/0,
grow_atom_table/1,
problog_exact_nested/3,
problog_tabling_negated_synonym/2,
problog_control/2,
build_trie/2,
build_trie/3,
problog_infer/2,
problog_infer/3,
problog_infer_forest/2,
write_bdd_struct_script/3,
problog_bdd_forest/1,
require/1,
unrequire/1,
bdd_files/2,
delete_bdd_forest_files/1,
recover_grounding_id/2,
grounding_is_known/2,
grounding_id/3,
decision_fact/2,
reset_non_ground_facts/0,
'::'/2,
probabilistic_fact/3,
continuous_fact/3,
init_problog/1,
problog_call/1,
problog_infer_forest_supported/0,
problog_bdd_forest_supported/0,
problog_real_kbest/4,
op( 550, yfx, :: ),
op( 550, fx, ?:: ),
op(1149, yfx, <-- ),
op( 1150, fx, problog_table ),
in_interval/3,
below/2,
above/2]).
:- style_check(all).
:- yap_flag(unknown,error).
% general yap modules
:- use_module(library(lists), [append/3,member/2,memberchk/2,reverse/2,select/3,nth1/3,nth1/4,nth0/4,sum_list/2]).
:- use_module(library(terms), [variable_in_term/2,variant/2] ).
:- use_module(library(random), [random/1]).
:- use_module(library(system), [tmpnam/1,shell/2,delete_file/1]).
:- use_module(library(ordsets), [list_to_ord_set/2, ord_insert/3, ord_union/3]).
%Joris
:- use_module(library(lineutils)).
%Joris
% problog related modules
:- use_module('problog/variables').
:- use_module('problog/extlists').
:- use_module('problog/gflags').
:- use_module('problog/flags').
:- use_module('problog/print').
:- use_module('problog/os').
:- use_module('problog/ptree', [init_ptree/1,
delete_ptree/1,
member_ptree/2,
enum_member_ptree/2,
insert_ptree/2,
delete_ptree/2,
edges_ptree/2,
count_ptree/2,
prune_check_ptree/2,
empty_ptree/1,
merge_ptree/2,
merge_ptree/3,
bdd_ptree/3,
bdd_struct_ptree/3,
bdd_ptree_map/4,
bdd_struct_ptree_map/4,
traverse_ptree/2, %theo
print_ptree/1, %theo
statistics_ptree/0, %theo
print_nested_ptree/1, %theo
trie_to_bdd_trie/5, %theo
trie_to_bdd_struct_trie/5,
nested_trie_to_bdd_trie/5, %theo
nested_trie_to_bdd_struct_trie/5,
ptree_decomposition/3,
ptree_decomposition_struct/3,
nested_ptree_to_BDD_script/3, %theo
nested_ptree_to_BDD_struct_script/3,
ptree_db_trie_opt_performed/3,
bdd_vars_script/1]).
:- use_module('problog/tabling').
:- use_module('problog/sampling').
:- use_module('problog/intervals').
:- use_module('problog/mc_DNF_sampling').
:- use_module('problog/timer').
:- use_module('problog/utils').
:- use_module('problog/ad_converter').
:- catch(use_module('problog/variable_elimination'),_,true).
% op attaching probabilities to facts
:- op( 550, yfx, :: ).
:- op( 550, fx, ?:: ).
%%%%%%%%%%%%%%%%%%%%%%%%
% control predicates on various levels
%%%%%%%%%%%%%%%%%%%%%%%%
% global over all inference methods, internal use only
:- dynamic(problog_predicate/2).
:- dynamic(problog_continuous_predicate/3).
% global over all inference methods, exported
:- dynamic(tunable_fact/2).
:- dynamic(non_ground_fact/1).
:- dynamic(continuous_fact/1).
% global, manipulated via problog_control/2
:- dynamic(up/0).
:- dynamic(limit/0).
:- dynamic(mc/0).
:- dynamic(remember/0).
:- dynamic(exact/0). % Theo tabling
:- dynamic(find_decisions/0).
:- dynamic(internal_strategy/0).
% local to problog_delta
:- dynamic(low/2).
:- dynamic(up/2).
:- dynamic(stopDiff/1).
% local to problog_kbest
:- dynamic(current_kbest/3).
% local to problog_max
:- dynamic(max_probability/1).
:- dynamic(max_proof/1).
% local to problog_montecarlo
:- dynamic(mc_prob/1).
% local to problog_answers
:- dynamic(answer/1).
% to keep track of the groundings for non-ground facts
:- dynamic(grounding_is_known/2).
% for decisions
:- dynamic(decision_fact/2).
% for fact where the proabability is a variable
:- dynamic(dynamic_probability_fact/1).
:- dynamic(dynamic_probability_fact_extract/2).
% for storing continuous parts of proofs (Hybrid ProbLog)
:- dynamic([hybrid_proof/3, hybrid_proof/4]).
:- dynamic(hybrid_proof_disjoint/4).
% local to problog_koptimal
:- dynamic optimal_proof/2.
:- dynamic current_prob/1.
:- dynamic possible_proof/2.
:- dynamic impossible_proof/1.
:- table conditional_prob/4.
% ProbLog files declare prob. facts as P::G
% and this module provides the predicate X::Y to iterate over them
:- multifile('::'/2).
:- multifile(user:term_expansion/1).
% directory where simplecudd executable is located
% automatically set during loading -- assumes it is in /usr/local/bin or same place where YAP has
% been installed.)
:- getcwd(PD0),
atom_concat(PD0, '../../bin', PD),
set_problog_path(PD).
:- PD = '/usr/local/bin',
set_problog_path(PD).
%%%%%%%%%%%%
% iterative deepening on minimal probabilities (delta, max, kbest):
% - first threshold (not in log-space as only used to retrieve argument for init_threshold/1, which is also used with user-supplied argument)
% - last threshold to ensure termination in case infinite search space (saved also in log-space for easy comparison with current values during search)
% - factor used to decrease threshold for next level, NewMin=Factor*OldMin (saved also in log-space)
%%%%%%%%%%%%
:- initialization((
problog_define_flag(first_threshold, problog_flag_validate_indomain_0_1_open, 'starting threshold iterative deepening', 0.1, inference),
problog_define_flag(last_threshold, problog_flag_validate_indomain_0_1_open, 'stopping threshold iterative deepening', 1.0E-30, inference, flags:last_threshold_handler),
problog_define_flag(id_stepsize, problog_flag_validate_indomain_0_1_close, 'threshold shrinking factor iterative deepening', 0.5, inference, flags:id_stepsize_handler)
)).
%%%%%%%%%%%%
% prune check stops derivations if they use a superset of facts already known to form a proof
% (very) costly test, can be switched on/off here (This is obsolete as it is not included in implementation)
%%%%%%%%%%%%
:- initialization(
problog_define_flag(prunecheck, problog_flag_validate_switch, 'stop derivations including all facts of known proof', off, inference)
).
%%%%%%%%%%%%
% max number of calls to probabilistic facts per derivation (to ensure termination)
%%%%%%%%%%%%
:- initialization(
problog_define_flag(maxsteps, problog_flag_validate_posint, 'max. number of prob. steps per derivation', 1000, inference)
).
%%%%%%%%%%%%
% BDD timeout in seconds, used as option in BDD tool
% files to write BDD script and pars
% bdd_file overwrites bdd_par_file with matching extended name
% if different name wanted, respect order when setting
% save BDD information for the (last) lower bound BDD used during inference
% produces three files named save_script, save_params, save_map
% located in the directory given by problog_flag dir
%%%%%%%%%%%%
:- initialization((
% problog_define_flag(bdd_path, problog_flag_validate_directory, 'simplecudd directory', '.',bdd),
problog_define_flag(bdd_time, problog_flag_validate_posint, 'BDD computation timeout in seconds', 60, bdd),
problog_define_flag(save_bdd, problog_flag_validate_boolean, 'save BDD files for (last) lower bound', false, bdd),
problog_define_flag(dynamic_reorder, problog_flag_validate_boolean, 'use dynamic re-ordering for BDD', true, bdd),
problog_define_flag(bdd_static_order, problog_flag_validate_boolean, 'use a static order', false, bdd)
)).
%%%%%%%%%%%%
% Storing the calculated BDD for later reuse in koptimal
% - nodedump bdd of the last constructed bdd
% - nodedump bdd file where the nodedump should be stored
%%%%%%%%%%%%
:- initialization((
problog_define_flag(nodedump_bdd, problog_flag_validate_boolean, 'store the calculated BDD', false, bdd),
problog_define_flag(nodedump_file, problog_flag_validate_file, 'file to store the nodedump of the BDD', nodedump_bdd, bdd)
)).
%%%%%%%%%%%%
% determine whether ProbLog outputs information (number of proofs, intermediate results, ...)
% default was true, as otherwise problog_delta won't output intermediate bounds
% default is false now, as dtproblog will flood the user with verbosity
%%%%%%%%%%%%
:- initialization(
problog_define_flag(verbose, problog_flag_validate_boolean, 'output intermediate information', false,output)
).
%%%%%%%%%%%%
% determine whether ProbLog outputs proofs when adding to trie
% default is false
%%%%%%%%%%%%
:- initialization(
problog_define_flag(show_proofs, problog_flag_validate_boolean, 'output proofs', false,output)
).
%%%%%%%%%%%%
% Trie dump parameter for saving a file with the trie structure in the directory by problog_flag dir
%%%%%%%%%%%%
:- initialization(
problog_define_flag(triedump, problog_flag_validate_boolean, 'generate file: trie_file containing the trie structure', false,output)
).
%%%%%%%%%%%%
% Default inference method
%%%%%%%%%%%%
:- initialization(problog_define_flag(inference, problog_flag_validate_dummy, 'default inference method', exact, inference)).
%%%%%%%%%%%%
% Tunable Facts
%%%%%%%%%%%%
:- initialization(problog_define_flag(tunable_fact_start_value,problog_flag_validate_dummy,'How to initialize tunable probabilities',uniform(0.1,0.9),learning_general,flags:learning_prob_init_handler)).
problog_dir(PD):- problog_path(PD).
%%%%%%%%%%%%%%%%%%%%%%%%
% initialization of global parameters
%%%%%%%%%%%%%%%%%%%%%%%%
init_global_params :-
% vsc: removed this, it is major league weird...
% grow_atom_table(1000000), % this will reserve us some memory, there are cases where you might need more
%%%%%%%%%%%%
% working directory: all the temporary and output files will be located there
% it assumes a subdirectory of the current working dir
% on initialization, the current dir is the one where the user's file is located
% should be changed to use temporary folder structure of operating system
%%%%%%%%%%%%
tmpnam(TempFolder),
atomic_concat([TempFolder, '_problog'], TempProblogFolder),
problog_define_flag(dir, problog_flag_validate_directory, 'directory for files', TempProblogFolder, output),
problog_define_flag(bdd_par_file, problog_flag_validate_file, 'file for BDD variable parameters', example_bdd_probs, bdd, flags:working_file_handler),
problog_define_flag(bdd_result, problog_flag_validate_file, 'file to store result calculated from BDD', example_bdd_res, bdd, flags:working_file_handler),
problog_define_flag(bdd_file, problog_flag_validate_file, 'file for BDD script', example_bdd, bdd, flags:bdd_file_handler),
problog_define_flag(static_order_file, problog_flag_validate_file, 'file for BDD static order', example_bdd_order, bdd, flags:working_file_handler),
problog_define_flag(map_file, problog_flag_validate_file, 'the file to output the variable map', map_file, output, flags:working_file_handler),
%%%%%%%%%%%%
% montecarlo: recalculate current approximation after N samples
% montecarlo: write log to this file
%%%%%%%%%%%%
problog_define_flag(mc_logfile, problog_flag_validate_file, 'logfile for montecarlo', 'log.txt', mcmc, flags:working_file_handler),
check_existance('simplecudd').
% parameter initialization to be called after returning to user's directory:
:- initialization(init_global_params).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% internal control flags
% if on
% - up: collect stopped derivations to build upper bound
% - limit: iterative deepening reached limit -> should go to next level
% - mc: using problog_montecarlo, i.e. proving with current sample instead of full program
% - remember: save BDD files containing script, params and mapping
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_control(on,X) :-
call(X),!.
problog_control(on,X) :-
assertz(X).
problog_control(off,X) :-
retractall(X).
problog_control(check,X) :-
call(X).
reset_control :-
problog_control(off,up),
problog_control(off,mc),
problog_control(off,limit),
% problog_control(off,exact),
problog_control(off,remember).
:- initialization(reset_control).
grow_atom_table(N):-
generate_atoms(N, 0),
garbage_collect_atoms.
generate_atoms(N, N):-!.
generate_atoms(N, A):-
NA is A + 1,
atomic_concat([theo, A], _Atom),
generate_atoms(N, NA).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% nice user syntax Prob::Fact
% automatic translation to internal hardware access format
%
% probabilities =1 are dropped -> normal Prolog fact
%
% internal fact representation
% - prefixes predicate name with problog_
% - adds unique ID as first argument
% - adds logarithm of probability as last argument
% - keeps original arguments in between
%
% for each predicate appearing as probabilistic fact, wrapper clause is introduced:
% - head is most general instance of original fact
% - body is corresponding version of internal fact plus call to add_to_proof/2 to update current state during proving
% example: edge(A,B) :- problog_edge(ID,A,B,LogProb), add_to_proof(ID,LogProb).
%
% dynamic predicate problog_predicate(Name,Arity) keeps track of predicates that already have wrapper clause
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% converts annotated disjunctions
term_expansion_intern((Head<--Body), Module, C):-
term_expansion_intern_ad((Head<--Body), Module,inference, C).
% converts ?:: prefix to ? :: infix, as handled by other clause
term_expansion_intern((Annotation::Fact), Module, ExpandedClause) :-
Annotation == ( '?' ),
term_expansion_intern(((?) :: Fact :- true), Module, ExpandedClause).
% handles decision clauses
term_expansion_intern((Annotation :: Head :- Body), Module, problog:ExpandedClause) :-
(
Annotation == ('?') ->
% It's a decision with a body
(decision_fact(_,Head) ->
throw(error('New decision unifies with already defined decision!', (Head))) ; true
),
copy_term((Head,Body),(HeadCopy,_BodyCopy)),
functor(Head, Functor, Arity),
atomic_concat([problog_,Functor],LongFunctor),
Head =.. [Functor|Args],
append(Args,[LProb],LongArgs),
probclause_id(ID),
ProbFactHead =.. [LongFunctor,ID|LongArgs],
assertz(decision_fact(ID,Head)),
ExpandedClause = (ProbFactHead :-
user:Body,
(problog_control(check,internal_strategy) ->
dtproblog:strategy_log(ID,Head,LProb)
;
LProb = ('?')
)
),
assertz(dynamic_probability_fact(ID)),
assertz((dynamic_probability_fact_extract(HeadCopy,P_New) :-
dtproblog:strategy(ID,HeadCopy,P_New)
)),
(ground(Head) ->
true
;
assertz(non_ground_fact(ID))
),
problog_predicate(Functor, Arity, LongFunctor, Module)
;
% If it has a body, it's not supported
(Body == true ->
% format('Expanding annotated fact ~q :: ~q :- ~q in other clause.~n',[Annotation,Head,Body]),
fail
;
throw(error('Please use an annoted disjunction P :: Head <-- Body instead of the annated clause.', (Annotation :: Head :- Body)))
)
).
% handles continuous facts
term_expansion_intern(Head :: Goal,Module,problog:ProbFact) :-
nonvar(Head),
Head=(X,Distribution),
!,
(
Distribution=gaussian(Mu,Sigma)
->
true;
( throw(unknown_distribution)
)
),
(
variable_in_term_exactly_once(Goal,X)
->
true;
(
throw(variable)
)
),
% bind_the_variable
X=Distribution,
% find position in term
Goal=..[Name|Args],
once(nth1(Pos,Args,Distribution)),
length(Args,Arity),
atomic_concat([problogcontinuous_,Name],ProblogName),
probclause_id(ID),
% is it a tunable fact?
(
(number(Mu),number(Sigma))
->
NewArgs=Args;
(
Mu_Random is 0.1, % random*4-2,
Sigma_Random is 0.4, % random*2+0.5,
nth1(Pos,Args,_,KeepArgs),
nth1(Pos,NewArgs,gaussian(Mu_Random,Sigma_Random),KeepArgs),
assertz(tunable_fact(ID,gaussian(Mu,Sigma)))
)
),
ProbFact =.. [ProblogName,ID|NewArgs],
(
ground(Goal)
->
true;
assertz(non_ground_fact(ID))
),
assertz(continuous_fact(ID)),
problog_continuous_predicate(Name, Arity, Pos,ProblogName,Module).
% handles probabilistic facts
term_expansion_intern(P :: Goal,Module,problog:ProbFact) :-
copy_term((P,Goal),(P_Copy,Goal_Copy)),
functor(Goal, Name, Arity),
atomic_concat([problog_,Name],ProblogName),
Goal =.. [Name|Args],
append(Args,[LProb],L1),
probclause_id(ID),
ProbFact =.. [ProblogName,ID|L1],
(
(nonvar(P), P = t(TrueProb))
->
(
assertz(tunable_fact(ID,TrueProb)),
sample_initial_value_for_tunable_fact(Goal,LProb)
);
(
ground(P)
->
EvalP is P, % allows one to use ground arithmetic expressions as probabilities
LProb is log(P),
assert_static(prob_for_id(ID,EvalP,LProb)); % Prob is fixed -- assert it for quick retrieval
(
% Probability is a variable... check wether it appears in the term
(
variable_in_term(Goal,P)
->
true;
(
format(user_error,'If you use probabilisitic facts with a variable as probabilility, the variable has to appear inside the fact.~n',[]),
format(user_error,'You used ~q in your program.~2n',[P::Goal]),
throw(non_ground_fact_error(P::Goal))
)
),
LProb=log(P),
assertz(dynamic_probability_fact(ID)),
assertz(dynamic_probability_fact_extract(Goal_Copy,P_Copy))
)
)
),
(
ground(Goal)
->
true;
assertz(non_ground_fact(ID))
),
problog_predicate(Name, Arity, ProblogName,Module).
sample_initial_value_for_tunable_fact(Goal,LogP) :-
problog_flag(tunable_fact_start_value,Initializer),
(
Initializer=uniform(Low,High)
->
(
Spread is High-Low,
random(Rand),
P1 is Rand*Spread+Low,
% security check, to avoid log(0)
(
P1>0
->
P=P1;
P=0.5
)
);
(
number(Initializer)
->
P=Initializer
;
atom(Initializer)
->
call(user:Initializer,Goal,P)
;
throw(unkown_probability_initializer(Initializer))
)
),
LogP is log(P).
%
% introduce wrapper clause if predicate seen first time
problog_continuous_predicate(Name, Arity,ContinuousArgumentPosition,_,_) :-
problog_continuous_predicate(Name, Arity,OldContinuousArgumentPosition),
!,
(
ContinuousArgumentPosition=OldContinuousArgumentPosition
->
true;
(
format(user_error,'Continuous predicates of the same name and arity must ',[]),
format(user_error,'have the continuous argument all at the same position.~n',[]),
format(user_error,'Your program contains the predicate ~q/~q. There are ',[]),
format(user_error,'atoms which have the continuous argument at position ',[]),
format(user_error,'~q and other have it at ~q.',[Name,Arity,OldContinuousArgumentPosition,ContinuousArgumentPosition]),
throw(continuous_argument(not_unique_position))
)
).
problog_continuous_predicate(Name, Arity, ContinuousArgumentPosition, ProblogName,Module) :-
LBefore is ContinuousArgumentPosition-1,
LAfter is Arity-ContinuousArgumentPosition,
length(ArgsBefore,LBefore),
length(ArgsAfter,LAfter),
append(ArgsBefore,[(ID,ID2,GaussianArg)|ArgsAfter],Args),
append(ArgsBefore,[GaussianArg|ArgsAfter],ProbArgs),
OriginalGoal =.. [Name|Args],
ProbFact =.. [ProblogName,ID|ProbArgs],
assertz( (Module:OriginalGoal :- ProbFact,
% continuous facts always get a grounding ID, even when they are actually ground
% this simplifies the BDD script generation
non_ground_fact_grounding_id(ProbFact,Ground_ID),
atomic_concat([ID,'_',Ground_ID],ID2),
add_continuous_to_proof(ID,ID2)
)),
assertz(problog_continuous_predicate(Name, Arity,ContinuousArgumentPosition)),
ArityPlus1 is Arity+1,
dynamic(problog:ProblogName/ArityPlus1).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% predicates for the user to manipulate continuous facts
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
in_interval(ID,Low,High) :-
var(ID),
throw(error(instantiation_error,in_interval(ID,Low,High))).
in_interval(ID,Low,High) :-
var(Low),
throw(error(instantiation_error,in_interval(ID,Low,High))).
in_interval(ID,Low,High) :-
var(High),
throw(error(instantiation_error,in_interval(ID,Low,High))).
in_interval(ID,Low,High) :-
\+ number(Low),
throw(error(type_error(number,Low),in_interval(ID,Low,High))).
in_interval(ID,Low,High) :-
\+ number(High),
throw(error(type_error(number,High),in_interval(ID,Low,High))).
in_interval(ID,Low,High) :-
Low<High,
interval_merge(ID,interval(Low,High)).
below(ID,X) :-
var(ID),
throw(error(instantiation_error,below(ID,X))).
below(ID,X) :-
var(X),
throw(error(instantiation_error,below(ID,X))).
below(ID,X) :-
\+ number(X),
throw(error(type_error(number,X),below(ID,X))).
below(ID,X) :-
interval_merge(ID,below(X)).
above(ID,X) :-
var(ID),
throw(error(instantiation_error,above(ID,X))).
above(ID,X) :-
var(X),
throw(error(instantiation_error,above(ID,X))).
above(ID,X) :-
\+ number(X),
throw(error(type_error(number,X),above(ID,X))).
above(ID,X) :-
interval_merge(ID,above(X)).
interval_merge((_ID,GroundID,_Type),Interval) :-
atomic_concat([interval,'_',GroundID],Key),
b_getval(Key,OldInterval),
intervals_merge(OldInterval,Interval,NewInterval),
NewInterval \= none,
NewInterval \= interval(Bound,Bound),
b_setval(Key,NewInterval).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% assert/retract for probabilistic facts
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_assert(P::Goal) :-
problog_assert(user,P::Goal).
problog_assert(Module, P::Goal) :-
term_expansion_intern(P::Goal,Module,problog:ProbFact),
assertz(problog:ProbFact).
problog_retractall(Goal) :-
Goal =.. [F|Args],
append([_ID|Args],[_Prob],Args2),
atomic_concat(['problog_',F],F2),
ProbLogGoal=..[F2|Args2],
retractall(problog:ProbLogGoal).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% introduce wrapper clause if predicate seen first time
problog_predicate(Name, Arity, _,_) :-
problog_predicate(Name, Arity), !.
problog_predicate(Name, Arity, ProblogName,Mod) :-
functor(OriginalGoal, Name, Arity),
OriginalGoal =.. [_|Args],
append(Args,[Prob],L1),
ProbFact =.. [ProblogName,ID|L1],
assertz( (Mod:OriginalGoal :-
ProbFact,
grounding_id(ID,OriginalGoal,ID2),
prove_problog_fact(ID,ID2,Prob)
)),
assertz( (Mod:problog_not(OriginalGoal) :-
ProbFact,
grounding_id(ID,OriginalGoal,ID2),
prove_problog_fact_negated(ID,ID2,Prob)
)),
assertz(problog_predicate(Name, Arity)),
ArityPlus2 is Arity+2,
dynamic(problog:ProblogName/ArityPlus2).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Generating and storing the grounding IDs for
% non-ground probabilistic facts
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
:- multifile(user:problog_user_ground/1).
user:problog_user_ground(Goal) :-
ground(Goal).
non_ground_fact_grounding_id(Goal,ID) :-
user:problog_user_ground(Goal), !,
(grounding_is_known(Goal,ID) ->
true
;
(
nb_getval(non_ground_fact_grounding_id_counter,ID),
ID2 is ID+1,
nb_setval(non_ground_fact_grounding_id_counter,ID2),
assertz(grounding_is_known(Goal,ID))
)
).
non_ground_fact_grounding_id(Goal,_) :-
format(user_error,'The current program uses non-ground facts.~n', []),
format(user_error,'If you query those, you may only query fully-grounded versions of the fact.~n',[]),
format(user_error,'Within the current proof, you queried for ~q which is not ground.~2n', [Goal]),
throw(error(non_ground_fact(Goal))).
reset_non_ground_facts :-
required(keep_ground_ids),
!.
reset_non_ground_facts :-
nb_setval(non_ground_fact_grounding_id_counter,0),
retractall(grounding_is_known(_,_)).
:- initialization(reset_non_ground_facts).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Getting the ID for any kind of ground fact
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
grounding_id(ID,Goal,ID2) :-
(non_ground_fact(ID)->
non_ground_fact_grounding_id(Goal,G_ID),
atomic_concat([ID,'_',G_ID],ID2)
;
ID2=ID
).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% What to do when prolog tries to prove a problog fact
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
prove_problog_fact(ClauseID,GroundID,Prob) :-
(problog_control(check,find_decisions) ->
signal_decision(ClauseID,GroundID)
;
(Prob = ('?') ->
add_to_proof(GroundID,0) % 0 is log(1)!
;
% Checks needed for LeDTProbLog
(Prob = always ->
% Always true, do not add to trie
true
;
(Prob = never ->
% Always false, do not add to trie
fail
;
% something in between, add to proof
ProbEval is Prob,
add_to_proof(GroundID,ProbEval)
)
)
)
).
prove_problog_fact_negated(ClauseID,GroundID,Prob) :-
(problog_control(check,find_decisions) ->
signal_decision(ClauseID,GroundID)
;
(Prob = ('?') ->
add_to_proof_negated(GroundID,-inf) % 0 is log(1)!
;
% Checks needed for LeDTProbLog
(Prob = always ->
% Always true, do not add to trie
fail
;
(Prob = never ->
% Always false, do not add to trie
true
;
% something in between, add to proof
ProbEval is Prob,
add_to_proof_negated(GroundID,ProbEval)
)
)
)
).
% generate next global identifier
:- initialization(nb_setval(probclause_counter,0)).
probclause_id(ID) :-
nb_getval(probclause_counter,ID), !,
C1 is ID+1,
nb_setval(probclause_counter,C1), !.
% backtrack over all probabilistic facts
% must come before term_expansion
Prob::Goal :-
probabilistic_fact(Prob,Goal,_ID).
(V,Distribution)::Goal :-
continuous_fact((V,Distribution),Goal,_ID).
% backtrack over all probabilistic facts
probabilistic_fact(Prob,Goal,ID) :-
ground(Goal),
!,
Goal =.. [F|Args],
atomic_concat('problog_',F,F2),
append([ID|Args],[LProb],Args2),
Goal2 =..[F2|Args2],
length(Args2,N),
current_predicate(F2/N),
Goal2,
number(LProb),
Prob is exp(LProb).
probabilistic_fact(Prob,Goal,ID) :-
get_internal_fact(ID,ProblogTerm,_ProblogName,_ProblogArity),
ProblogTerm =.. [F,_ID|Args],
append(Args2,[LProb],Args),
name(F,[_p,_r,_o,_b,_l,_o,_g,_|F2Chars]),
name(F2,F2Chars),
Goal =.. [F2|Args2],
(
dynamic_probability_fact(ID)
->
Prob=p;
Prob is exp(LProb)
).
continuous_fact((V,Distribution),Goal,ID) :-
get_internal_continuous_fact(ID,ProblogTerm,ProblogName,_ProblogArity,ContinuousPos),
% strip away problog_continuous
ProblogTerm=..[ProblogName,ID|Arguments],
nth1(ContinuousPos,Arguments,Distribution,Rest),
nth1(ContinuousPos,Arguments2,V,Rest),
atomic_concat(problogcontinuous_,Name,ProblogName),
% Build final term
Goal=..[Name|Arguments2].
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% proof_id(-ID) generates a new ID for a proof
% reset_proof_id resets the ID counter to 0
%
% this ID is used by Hybrid ProbLog to identify proofs
% and later for disjoining them
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
proof_id(ID) :-
nb_getval(problog_proof_id,ID),
ID2 is ID+1,
nb_setval(problog_proof_id,ID2).
reset_proof_id :-
nb_setval(problog_proof_id,0).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% access/update the probability of ID's fact
% hardware-access version: naively scan all problog-predicates (except if prob is recorded in static database),
% cut choice points if ID is ground (they'll all fail as ID is unique),
% but not if it isn't (used to iterate over all facts when writing out probabilities for learning)
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% using a dummy for the static prob database is more efficient than checking for current_predicate
prob_for_id(dummy,dummy,dummy).
get_fact_probability(A, Prob) :-
ground(A),
\+ number(A),
name(A, A_Codes),
once(append(Part1, [95|Part2], A_Codes)), % 95 = '_'
number_codes(ID, Part1), !,
% let's check whether Part2 contains an 'l' (l=low)
\+ memberchk(108,Part2),
number_codes(Grounding_ID, Part2),
(
dynamic_probability_fact(ID)
->
grounding_is_known(Goal, Grounding_ID),
dynamic_probability_fact_extract(Goal, Prob)
;
get_fact_probability(ID, Prob)
),
!.
get_fact_probability(ID,Prob) :-
ground(ID),
prob_for_id(ID,Prob,_),
!.
get_fact_probability(ID,Prob) :-
(
ground(ID) ->
get_internal_fact(ID,ProblogTerm,_ProblogName,ProblogArity),!
;
get_internal_fact(ID,ProblogTerm,_ProblogName,ProblogArity)
),
arg(ProblogArity,ProblogTerm,Log),
(Log = ('?') ->
throw(error('Why do you want to know the probability of a decision?')) %fail
; ground(Log) ->
Prob is exp(Log)
;
Prob = p
).
get_fact_log_probability(ID,Prob) :-
ground(ID),
prob_for_id(ID,_,Prob),!.
get_fact_log_probability(ID,Prob) :-
(
ground(ID) ->
get_internal_fact(ID,ProblogTerm,_ProblogName,ProblogArity),!
;
get_internal_fact(ID,ProblogTerm,_ProblogName,ProblogArity)
),
arg(ProblogArity,ProblogTerm,Prob),
Prob \== ('?').
get_fact_log_probability(ID,Prob) :-
get_fact_probability(ID,Prob1),
Prob is log(Prob1).
set_fact_probability(ID,Prob) :-
get_internal_fact(ID,ProblogTerm,ProblogName,ProblogArity),
retract(ProblogTerm),
ProblogTerm =.. [ProblogName|ProblogTermArgs],
nth1(ProblogArity,ProblogTermArgs,_,KeepArgs),
NewLogProb is log(Prob),
nth1(ProblogArity,NewProblogTermArgs,NewLogProb,KeepArgs),
NewProblogTerm =.. [ProblogName|NewProblogTermArgs],
assertz(NewProblogTerm).
get_internal_fact(ID,ProblogTerm,ProblogName,ProblogArity) :-
problog_predicate(Name,Arity),
atomic_concat([problog_,Name],ProblogName),
ProblogArity is Arity+2,
functor(ProblogTerm,ProblogName,ProblogArity),
arg(1,ProblogTerm,ID),
call(ProblogTerm).
get_continuous_fact_parameters(ID,Parameters) :-
(
ground(ID) ->
get_internal_continuous_fact(ID,ProblogTerm,_ProblogName,ProblogArity,ContinuousPos),!
;
get_internal_continuous_fact(ID,ProblogTerm,_ProblogName,ProblogArity,ContinuousPos)
),
InternalPos is ContinuousPos+1,
arg(InternalPos,ProblogTerm,Parameters).
get_internal_continuous_fact(ID,ProblogTerm,ProblogName,ProblogArity,ContinuousPos) :-
problog_continuous_predicate(Name,Arity,ContinuousPos),
atomic_concat([problogcontinuous_,Name],ProblogName),
ProblogArity is Arity+1,
functor(ProblogTerm,ProblogName,ProblogArity),
arg(1,ProblogTerm,ID),
call(ProblogTerm).
set_continuous_fact_parameters(ID,Parameters) :-
get_internal_continuous_fact(ID,ProblogTerm,ProblogName,_ProblogArity,ContinuousPos),
retract(ProblogTerm),
ProblogTerm =.. [ProblogName|ProblogTermArgs],
nth0(ContinuousPos,ProblogTermArgs,_,KeepArgs),
nth0(ContinuousPos,NewProblogTermArgs,Parameters,KeepArgs),
NewProblogTerm =.. [ProblogName|NewProblogTermArgs],
assertz(NewProblogTerm).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% writing all probabilistic and continuous facts to Filename
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
export_facts(Filename) :-
open(Filename,'write',Handle),
%compiled ADs
forall((current_predicate(user:ad_intern/3),user:ad_intern(Original,ID,Facts)),
print_ad_intern(Handle,Original,ID,Facts)
),
nl(Handle),
% probabilistic facts
% but comment out auxiliary facts stemmig from
% compiled ADs
forall(P::Goal,
(
is_mvs_aux_fact(Goal)
->
format(Handle,'% ~10f :: ~q.~n',[P,Goal]);
format(Handle,'~10f :: ~q.~n',[P,Goal])
)
),
nl(Handle),
% continuous facts (Hybrid ProbLog)
forall(continuous_fact(ID),
(
get_continuous_fact_parameters(ID,Param),
format(Handle,'~q. % ~q~n',[Param,ID])
)
),
close(Handle).
is_mvs_aux_fact(A) :-
functor(A,B,_),
atom_concat(mvs_fact_,_,B).
% code for printing the compiled ADs
print_ad_intern(Handle,(Head<--Body),_ID,Facts) :-
print_ad_intern(Head,Facts,0.0,Handle),
format(Handle,' <-- ~q.~n',[Body]).
print_ad_intern((A1;B1),[A2|B2],Mass,Handle) :-
once(print_ad_intern_one(A1,A2,Mass,NewMass,Handle)),
format(Handle,'; ',[]),
print_ad_intern(B1,B2,NewMass,Handle).
print_ad_intern(_::Fact,[],Mass,Handle) :-
P2 is 1.0 - Mass,
format(Handle,'~10f :: ~q',[P2,Fact]).
print_ad_intern(P::A1,[A2],Mass,Handle) :-
once(print_ad_intern_one(P::A1,A2,Mass,_NewMass,Handle)).
print_ad_intern_one(_::Fact,_::AuxFact,Mass,NewMass,Handle) :-
% ask problog to get the fact_id
once(probabilistic_fact(P,AuxFact,_FactID)),
P2 is P * (1-Mass),
NewMass is Mass+P2,
format(Handle,'~10f :: ~q',[P2,Fact]).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% recover fact for given id
% list version not exported (yet?)
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% ID of ground fact
get_fact(ID,OutsideTerm) :-
get_internal_fact(ID,ProblogTerm,ProblogName,ProblogArity),
!,
ProblogTerm =.. [_Functor,ID|Args],
atomic_concat('problog_',OutsideFunctor,ProblogName),
Last is ProblogArity-1,
nth1(Last,Args,_LogProb,OutsideArgs),
OutsideTerm =.. [OutsideFunctor|OutsideArgs].
% ID of instance of non-ground fact: get fact from grounding table
get_fact(ID,OutsideTerm) :-
recover_grounding_id(ID,GID),
grounding_is_known(OutsideTerm,GID).
recover_grounding_id(Atom,ID) :-
name(Atom,List),
reverse(List,Rev),
recover_number(Rev,NumRev),
reverse(NumRev,Num),
name(ID,Num).
recover_number([95|_],[]) :- !. % name('_',[95])
recover_number([A|B],[A|C]) :-
recover_number(B,C).
get_fact_list([],[]).
get_fact_list([ID|IDs],[Fact|Facts]) :-
(ID=not(X) -> Fact=not(Y); Fact=Y, ID=X),
get_fact(X,Y),
get_fact_list(IDs,Facts).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% ProbLog inference, core methods
%
% state of proving saved in two backtrackable global variables
% - problog_current_proof holds list of IDs of clauses used
% - problog_probability holds the sum of their log probabilities
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% called "inside" probabilistic facts to update current state of proving
% if number of steps exceeded, fail
% if fact used before, succeed and keep status as is
% if not prunable, calculate probability and
% if threshold exceeded, add stopped derivation to upper bound and fail
% else update state and succeed
%
% do not maintain gloabl variables in montecarlo mode
add_to_proof(ID, _LogProb) :-
problog_control(check, mc),
!,
montecarlo_check(ID).
add_to_proof(ID, LogProb) :-
b_getval(problog_steps,MaxSteps),
MaxSteps>0,
b_getval(problog_probability, CurrentLogProb),
nb_getval(problog_threshold, CurrentThreshold),
b_getval(problog_current_proof, IDs),
% check whether negation of this fact is already used in proof
\+ open_end_memberchk(not(ID),IDs),
( % check whether this fact is already used in proof
open_end_memberchk(ID, IDs)
->
true;
(
open_end_add(ID, IDs, NIDs),
NewLogProb is CurrentLogProb+LogProb,
(
NewLogProb < CurrentThreshold
->
(
upper_bound(NIDs),
fail
);
(
b_setval(problog_probability, NewLogProb),
b_setval(problog_current_proof, NIDs)
)
)
)
),
Steps is MaxSteps - 1,
b_setval(problog_steps, Steps).
add_to_proof_negated(ID, _) :-
problog_control(check, mc),
!,
% the sample has to fail if the fact is negated
\+ montecarlo_check(ID).
add_to_proof_negated(ID, LogProb) :-
b_getval(problog_steps, MaxSteps),
MaxSteps>0,
b_getval(problog_probability, CurrentLogProb),
nb_getval(problog_threshold, CurrentThreshold),
b_getval(problog_current_proof, IDs),
% check whether unnegated fact is already used in proof
\+ open_end_memberchk(ID, IDs),
( % check wether negation of this fact is already used in proof
open_end_memberchk(not(ID), IDs)
->
true;
(
open_end_add(not(ID), IDs, NIDs),
NewLogProb is CurrentLogProb + log(1-exp(LogProb)),
(
NewLogProb < CurrentThreshold
->
(
upper_bound(NIDs),
fail
);
(
b_setval(problog_probability, NewLogProb),
b_setval(problog_current_proof, NIDs)
)
)
)
),
Steps is MaxSteps - 1,
b_setval(problog_steps, Steps).
%Hybrid
add_continuous_to_proof(ID,GroundID) :-
b_getval(problog_continuous_facts_used,Facts),
(
memberchk((ID,GroundID),Facts)
->
true;
(
b_setval(problog_continuous_facts_used,[(ID,GroundID)|Facts]),
atomic_concat([interval,'_',GroundID],Key),
b_setval(Key,all)
)
).
% if in monte carlo mode ...
% (a) for ground facts (ID is number): check array to see if it can be used
montecarlo_check(ID) :-
number(ID),
!,
array_element(mc_sample,ID,V),
(
V == 1 -> true
;
V == 2 -> fail
;
new_sample(ID)
).
% (b) for non-ground facts (ID is FactID_GroundingID): check database of groundings in current sample
montecarlo_check(ComposedID) :-
% split_grounding_id(ComposedID,ID,GID),
recorded(mc_true,problog_mc_id(ComposedID),_),
!.
montecarlo_check(ComposedID) :-
% split_grounding_id(ComposedID,ID,GID),
recorded(mc_false,problog_mc_id(ComposedID),_),
!,
fail.
% (c) for unknown groundings of non-ground facts: generate a new sample (decompose the ID first)
montecarlo_check(ID) :-
name(ID,IDN),
recover_number(IDN,FactIDName),
name(FactID,FactIDName),
new_sample_nonground(ID,FactID).
% sampling from ground fact: set array value to 1 (in) or 2 (out)
new_sample(ID) :-
get_fact_probability(ID,Prob),
problog_random(R),
R<Prob,
!,
update_array(mc_sample,ID,1).
new_sample(ID) :-
update_array(mc_sample,ID,2),
fail.
% sampling from ground instance of non-ground fact: set database value for this grounding to true or false
new_sample_nonground(ComposedID,ID) :-
(dynamic_probability_fact(ID) ->
get_fact(ID,Fact),
split_grounding_id(ComposedID,ID,GID),
grounding_is_known(Fact,GID),
dynamic_probability_fact_extract(Fact,Prob)
;
get_fact_probability(ID,Prob)
),
problog_random(R),
(R < Prob ->
recorda(mc_true,problog_mc_id(ComposedID),_)
;
recorda(mc_false,problog_mc_id(ComposedID),_),
fail
).
% new_sample_nonground(ComposedID,_ID) :-
% recorda(mc_false,problog_mc_id(ComposedID),_),
% fail.
split_grounding_id(Composed,Fact,Grounding) :-
name(Composed,C),
split_g_id(C,F,G),
name(Fact,F),
name(Grounding,G).
split_g_id([95|Grounding],[],Grounding) :- !.
split_g_id([A|B],[A|FactID],GroundingID) :-
split_g_id(B,FactID,GroundingID).
% if threshold reached, remember this by setting limit to on, then
% if up is on, store stopped derivation in second trie
%
% List always length>=1 -> don't need []=true-case for tries
upper_bound(List) :-
problog_control(on, limit),
problog_control(check, up),
nb_getval(problog_stopped_proofs, Trie_Stopped_Proofs),
open_end_close_end(List, R),
% (prune_check(R, Trie_Stopped_Proofs) -> true; insert_ptree(R, Trie_Stopped_Proofs)).
insert_ptree(R, Trie_Stopped_Proofs).
% this is called by all inference methods before the actual ProbLog goal
% to set up environment for proving
% it resets control flags, method specific values to be set afterwards!
init_problog(Threshold) :-
reset_proof_id,
reset_non_ground_facts,
reset_control,
LT is log(Threshold),
b_setval(problog_probability, 0.0),
b_setval(problog_current_proof, []),
nb_setval(problog_threshold, LT),
problog_flag(maxsteps,MaxS),
init_tabling,
problog_var_clear_all,
b_setval(problog_steps, MaxS),
b_setval(problog_continuous_facts_used,[]),
retractall(hybrid_proof(_,_,_)),
retractall(hybrid_proof(_,_,_,_)),
retractall(hybrid_proof_disjoint(_,_,_,_)),
% reset all timers in case a query failed before
timer_reset(variable_elimination_time),
timer_reset(bdd_script_time),
timer_reset(bdd_generation_time),
timer_reset(script_gen_time_naive),
timer_reset(bdd_gen_time_naive),
timer_reset(script_gen_time_builtin),
timer_reset(bdd_gen_time_builtin),
timer_reset(script_gen_time_dec),
timer_reset(bdd_gen_time_dec),
timer_reset(sld_time),
timer_reset(build_tree_low).
% idea: proofs that are refinements of known proof can be pruned as they don't add probability mass
% note that current ptree implementation doesn't provide the check as there's no efficient method known so far...
prune_check(Proof, Trie) :-
problog_flag(prunecheck, on),
prune_check_ptree(Proof, Trie).
% to call a ProbLog goal, patch all subgoals with the user's module context
% (as logical part is there, but probabilistic part in problog)
problog_call(Goal) :-
yap_flag(typein_module, Module),
%%% if user provides init_db, call this before proving goal
(current_predicate(_,Module:init_db) -> call(Module:init_db); true),
put_module(Goal,Module,ModGoal),
call(ModGoal).
put_module((Mod:Goal,Rest),Module,(Mod:Goal,Transformed)) :-
!,
put_module(Rest,Module,Transformed).
put_module((Goal,Rest),Module,(Module:Goal,Transformed)) :-
!,
put_module(Rest,Module,Transformed).
put_module((Mod:Goal),_Module,(Mod:Goal)) :-
!.
put_module(Goal,Module,Module:Goal).
% end of core
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% evaluating a DNF given as trie using BDD
% input: Trie the trie to be used
% output: probability and status (to catch potential failures/timeouts from outside)
%
% with internal BDD timeout (set using problog flag bdd_time)
%
% bdd_ptree/3 constructs files for problogbdd from the trie
%
% if calling ProblogBDD doesn't exit successfully, status will be timeout
%
% writes number of proofs in trie and BDD time to standard user output
%
% if remember is on, input files for problogbdd will be saved
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
:- initialization((
problog_var_define(sld_time, times, time, messages('SLD resolution', ':', ' ms')),
problog_var_define(bdd_script_time, times, time, messages('Generating BDD script', ':', ' ms')),
problog_var_define(bdd_generation_time, times, time, messages('Constructing BDD', ':', ' ms')),
problog_var_define(trie_statistics, memory, untyped, messages('Trie usage', ':', '')),
problog_var_define(probability, result, number, messages('Probabilty', ' = ', '')),
problog_var_define(bdd_script_time(Method), times, time, messages('Generating BDD script '(Method), ':', ' ms')),
problog_var_define(bdd_generation_time(Method), times, time, messages('Constructing BDD '(Method), ':', ' ms')),
problog_var_define(probability(Method), result, number, messages('Probabilty '(Method), ' = ', '')),
problog_var_define(trie_statistics(Method), memory, untyped, messages('Trie usage '(Method), ':', '')),
problog_var_define(dbtrie_statistics(Method), memory, untyped, messages('Depth Breadth Trie usage '(Method), ':', '')),
problog_var_define(db_trie_opts_performed(Method), memory, untyped, messages('Optimisations performed '(Method), ':', '')),
problog_var_define(variable_elimination_time, times, time, messages('Variable Elimination', ':', ' ms')),
problog_var_define(variable_elimination_stats, memory, untyped, messages('Variable Elimination', ':', ''))
)).
problog_statistics(Stat, Result):-
problog_var_defined(Stat),
problog_var_is_set(Stat),
problog_var_get(Stat, Result).
generate_order_by_prob_fact_appearance(Order, FileName):-
open(FileName, 'write', Stream),
forall(member(PF, Order), (
ptree:get_var_name(PF, Name),
format(Stream, "@~w~n", [Name])
)),
close(Stream).
get_order(Trie, Order):-
findall(List, ptree:traverse_ptree(Trie, List), Proofs),
flatten(Proofs, ProbFacts),
remove_duplicates(ProbFacts, Order).
eval_dnf(OriTrie1, Prob, Status) :-
% Check whether we use Hybrid ProbLog
(
hybrid_proof(_,_,_)
->
( % Yes! run the disjoining stuff
retractall(hybrid_proof_disjoint(_,_,_,_)),
disjoin_hybrid_proofs,
init_ptree(OriTrie), % use this as tmp ptree
%%%%%%%%%%%%%%%%%%%%%
( % go over all stored proofs
enum_member_ptree(List,OriTrie1),
(
List=[_|_]
->
Proof=List;
Proof=[List]
),
(
select(continuous(ProofID),Proof,Rest)
->
(
% this proof is using continuous facts
all_hybrid_subproofs(ProofID,List2),
append(Rest,List2,NewProof),
insert_ptree(NewProof,OriTrie)
);
insert_ptree(Proof,OriTrie)
),
fail;
true
)
%%%%%%%%%%%%%%%%%%%%%
) ;
% Nope, just pass on the Trie
OriTrie=OriTrie1
),
((problog_flag(variable_elimination, true), nb_getval(problog_nested_tries, false)) ->
timer_start(variable_elimination_time),
trie_check_for_and_cluster(OriTrie),
timer_stop(variable_elimination_time,Variable_Elimination_Time),
problog_var_set(variable_elimination_time, Variable_Elimination_Time),
trie_replace_and_cluster(OriTrie, Trie),
variable_elimination_stats(Clusters, OrigPF, CompPF),
problog_var_set(variable_elimination_stats, compress(Clusters, OrigPF, CompPF)),
clean_up
;
Trie = OriTrie
),
(problog_flag(bdd_static_order, true) ->
get_order(Trie, Order),
problog_flag(static_order_file, SOFName),
convert_filename_to_working_path(SOFName, SOFileName),
generate_order_by_prob_fact_appearance(Order, SOFileName)
;
true
),
ptree:trie_stats(Memory, Tries, Entries, Nodes),
(nb_getval(problog_nested_tries, false) ->
ptree:trie_usage(Trie, TEntries, TNodes, TVirtualNodes),
problog_var_set(trie_statistics, tries(memory(Memory), tries(Tries), entries(TEntries), nodes(TNodes), virtualnodes(TVirtualNodes)))
;
problog_var_set(trie_statistics, tries(memory(Memory), tries(Tries), entries(Entries), nodes(Nodes)))
),
(problog_flag(triedump, true) ->
convert_filename_to_working_path(trie_file, TrieFile),
tell(TrieFile),
print_nested_ptree(Trie),
flush_output,
told,
tell(user_output)
;
true
),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
((Trie = Trie_Completed_Proofs, problog_flag(save_bdd, true)) ->
problog_control(on, remember)
;
problog_control(off, remember)
),
problog_flag(bdd_file, BDDFileFlag),
convert_filename_to_working_path(BDDFileFlag, BDDFile),
problog_flag(bdd_par_file, BDDParFileFlag),
convert_filename_to_working_path(BDDParFileFlag, BDDParFile),
% old reduction method doesn't support nested tries
((problog_flag(use_old_trie, true), nb_getval(problog_nested_tries, false)) ->
timer_start(bdd_script_time),
(problog_control(check, remember) ->
bdd_ptree_map(Trie, BDDFile, BDDParFile, Mapping),
convert_filename_to_working_path(save_map, MapFile),
tell(MapFile),
format('mapping(~q).~n', [Mapping]),
flush_output,
told
;
bdd_ptree(Trie, BDDFile, BDDParFile)
),
timer_stop(bdd_script_time,BDD_Script_Time),
problog_var_set(bdd_script_time, BDD_Script_Time),
timer_start(bdd_generation_time),
execute_bdd_tool(BDDFile, BDDParFile, Prob_old, Status_old),
timer_stop(bdd_generation_time,BDD_Generation_Time),
(Status_old == ok ->
problog_var_set(bdd_generation_time, BDD_Generation_Time),
problog_var_set(probability, Prob_old)
;
problog_var_set(bdd_generation_time, fail),
problog_var_set(probability, fail)
)
;
true
),
% naive method with nested trie support but not loops
((problog_flag(use_naive_trie, true); (problog_flag(use_old_trie, true), nb_getval(problog_nested_tries, true))) ->
timer_start(script_gen_time_naive),
BDDFile = BDDFile_naive,
nested_ptree_to_BDD_script(Trie, BDDFile_naive, BDDParFile),
timer_stop(script_gen_time_naive,Script_Gen_Time_Naive),
problog_var_set(bdd_script_time(naive), Script_Gen_Time_Naive),
timer_start(bdd_gen_time_naive),
execute_bdd_tool(BDDFile_naive, BDDParFile, Prob_naive, Status_naive),
timer_stop(bdd_gen_time_naive,BDD_Gen_Time_Naive),
(Status_naive == ok ->
problog_var_set(bdd_generation_time(naive),BDD_Gen_Time_Naive),
problog_var_set(probability(naive), Prob_naive)
;
problog_var_set(bdd_generation_time(naive), fail),
problog_var_set(probability(naive), fail)
)
;
true
),
% reduction method with depth_breadth trie support
problog_flag(db_trie_opt_lvl, ROptLevel),
problog_flag(db_min_prefix, MinPrefix),
(problog_flag(compare_opt_lvl, true) ->
generate_ints(0, ROptLevel, Levels)
;
Levels = [ROptLevel]
),
forall(member(OptLevel, Levels), (
(problog_flag(use_db_trie, true) ->
tries:trie_db_opt_min_prefix(MinPrefix),
timer_start(script_gen_time_builtin),
BDDFile = BDDFile_builtin,
(nb_getval(problog_nested_tries, false) ->
trie_to_bdd_trie(Trie, DBTrie, BDDFile_builtin, OptLevel, BDDParFile)
;
nested_trie_to_bdd_trie(Trie, DBTrie, BDDFile_builtin, OptLevel, BDDParFile)
),
atomic_concat(['builtin_', OptLevel], Builtin),
ptree:trie_stats(DBMemory, DBTries, DBEntries, DBNodes),
FM is DBMemory - Memory,
FT is DBTries - Tries,
FE is DBEntries - Entries,
FN is DBNodes - Nodes,
problog_var_set(dbtrie_statistics(Builtin), tries(memory(FM), tries(FT), entries(FE), nodes(FN))),
delete_ptree(DBTrie),
timer_stop(script_gen_time_builtin,Script_Gen_Time_Builtin),
problog_var_set(bdd_script_time(Builtin), Script_Gen_Time_Builtin),
timer_start(bdd_gen_time_builtin),
execute_bdd_tool(BDDFile_builtin, BDDParFile, Prob_builtin, Status_builtin),
timer_stop(bdd_gen_time_builtin,BDD_Gen_Time_Builtin),
ptree_db_trie_opt_performed(LVL1, LVL2, LV3),
problog_var_set(db_trie_opts_performed(Builtin), opt_perform(LVL1, LVL2, LV3)),
(Status_builtin == ok ->
problog_var_set(bdd_generation_time(Builtin), BDD_Gen_Time_Builtin),
problog_var_set(probability(Builtin), Prob_builtin)
;
problog_var_set(bdd_generation_time(Builtin), fail),
problog_var_set(probability(Builtin), fail)
)
;
true
)
)),
% decomposition method
(problog_flag(use_dec_trie, true) ->
BDDFile = BDDFile_dec,
timer_start(script_gen_time_dec),
ptree_decomposition(Trie, BDDFile_dec, BDDParFile),
timer_stop(script_gen_time_dec,Script_Gen_Time_Dec),
problog_var_set(bdd_script_time(dec), Script_Gen_Time_Dec),
timer_start(bdd_gen_time_dec),
execute_bdd_tool(BDDFile_dec, BDDParFile, Prob_dec, Status_dec),
timer_stop(bdd_gen_time_dec,BDD_Gen_Time_Dec),
(Status_dec == ok ->
problog_var_set(bdd_generation_time(dec), BDD_Gen_Time_Dec),
problog_var_set(probability(dec), Prob_dec)
;
problog_var_set(bdd_generation_time(dec), fail),
problog_var_set(probability(dec), fail)
)
;
true
),
(problog_control(check, remember) ->
convert_filename_to_working_path('save_script', SaveBDDFile),
copy_file(BDDFile, SaveBDDFile),
convert_filename_to_working_path('save_params', SaveBDDParFile),
copy_file(BDDParFile, SaveBDDParFile)
;
true
),
problog_control(off, remember),
(var(Status_old)->
(var(Status_naive)->
(var(Status_dec) ->
atomic_concat('builtin_', ROptLevel, ProbStat),
problog_statistics(probability(ProbStat), ProbB),
(ProbB = fail ->
Status = timeout
;
Prob = ProbB,
Status = ok
)
;
Prob = Prob_dec,
Status = Status_dec
)
;
Prob = Prob_naive,
Status = Status_naive
)
;
Prob = Prob_old,
Status = Status_old
),
(Trie =\= OriTrie ->
delete_ptree(Trie)
;
true
).
generate_ints(End, End, [End]).
generate_ints(Start, End, [Start|Rest]):-
Start < End,
Current is Start + 1,
generate_ints(Current, End, Rest).
execute_bdd_tool(BDDFile, BDDParFile, Prob, Status):-
problog_flag(bdd_time, BDDTime),
problog_flag(bdd_result, ResultFileFlag),
(problog_flag(nodedump_bdd,true) ->
problog_flag(nodedump_file,NodeDumpFile),
convert_filename_to_working_path(NodeDumpFile, SONodeDumpFile),
atomic_concat([' -sd ', SONodeDumpFile],ParamB)
;
ParamB = ''
),
(problog_flag(dynamic_reorder, true) ->
ParamD = ParamB
;
atomic_concat([ParamB, ' -dreorder'], ParamD)
),
(problog_flag(bdd_static_order, true) ->
problog_flag(static_order_file, FileName),
convert_filename_to_working_path(FileName, SOFileName),
atomic_concat([ParamD, ' -sord ', SOFileName], Param)
;
Param = ParamD
),
convert_filename_to_problog_path('problogbdd', ProblogBDD),
convert_filename_to_working_path(ResultFileFlag, ResultFile),
atomic_concat([ProblogBDD, Param,' -l ', BDDFile, ' -i ', BDDParFile, ' -m p -t ', BDDTime, ' > ', ResultFile], Command),
shell(Command, Return),
(Return =\= 0 ->
Status = timeout
;
see(ResultFile),
read(probability(Prob)),
seen,
catch(delete_file(ResultFile),_, fail),
Status = ok
).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% different inference methods
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% approximate inference: bounds based on single probability threshold
% problog_threshold(+Goal,+Threshold,-LowerBound,-UpperBound,-Status)
%
% use backtracking over problog_call to get all solutions
%
% trie 1 collects proofs, trie 2 collects stopped derivations, trie 3 is used to unit them for the upper bound
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_threshold(Goal, Threshold, _, _, _) :-
init_problog_threshold(Threshold),
problog_control(on,up),
problog_call(Goal),
add_solution,
fail.
problog_threshold(_, _, LP, UP, Status) :-
compute_bounds(LP, UP, Status).
init_problog_threshold(Threshold) :-
init_ptree(Trie_Completed_Proofs),
nb_setval(problog_completed_proofs, Trie_Completed_Proofs),
init_ptree(Trie_Stopped_Proofs),
nb_setval(problog_stopped_proofs, Trie_Stopped_Proofs),
init_problog(Threshold).
add_solution :-
% get the probabilistic facts used in this proof
b_getval(problog_current_proof, IDs),
(IDs == [] -> R = []; open_end_close_end(IDs, R)),
% get the continuous facts used in this proof
% (Hybrid ProbLog
b_getval(problog_continuous_facts_used,Cont_IDs),
(
Cont_IDs == []
->
Continuous=[];
(
proof_id(ProofID),
collect_all_intervals(Cont_IDs,ProofID,AllIntervals),
(
AllIntervals==[]
->
Continuous=[];
(
Continuous=[continuous(ProofID)],
assertz(hybrid_proof(ProofID,Cont_IDs,AllIntervals))
)
)
)
),
% we have both, no add it to the trie
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
append(R,Continuous,Final),
(
Final==[]
->
insert_ptree(true, Trie_Completed_Proofs);
insert_ptree(Final, Trie_Completed_Proofs)
).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
collect_all_intervals([],_,[]).
collect_all_intervals([(ID,GroundID)|T],ProofID,[Interval|T2]) :-
atomic_concat([interval,'_',GroundID],Key),
b_getval(Key,Interval),
Interval \= all, % we do not need to store continuous
% variables with domain [-oo,oo] (they have probability 1)
!,
assertz(hybrid_proof(ProofID,ID,GroundID,Interval)),
collect_all_intervals(T,ProofID,T2).
collect_all_intervals([_|T],ProofID,T2) :-
collect_all_intervals(T,ProofID,T2).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
all_hybrid_subproofs(ProofID,List) :-
findall((ID,GroundID,Intervals),hybrid_proof_disjoint(ProofID,ID,GroundID,Intervals),All),
generate_all_proof_combinations(All,List).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
generate_all_proof_combinations([],[]).
generate_all_proof_combinations([(_ID,GroundID,Intervals)|T],Result) :-
member((Interval,Tail),Intervals),
intervals_encode(Interval,IntervalEncoded),
atomic_concat([GroundID,IntervalEncoded],FullID),
encode_tail(Tail,GroundID,TailEncoded),
append([FullID|TailEncoded],T2,Result),
generate_all_proof_combinations(T,T2).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
encode_tail([],_,[]).
encode_tail([A|T],ID,[not(FullID)|T2]) :-
intervals_encode(A,AEncoded),
atomic_concat([ID,AEncoded],FullID),
encode_tail(T,ID,T2).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
disjoin_hybrid_proofs :-
% collect all used continuous facts
findall(GroundID,hybrid_proof(_,_,GroundID,_),IDs),
sort(IDs,IDsSorted),
disjoin_hybrid_proofs(IDsSorted).
disjoin_hybrid_proofs([]).
disjoin_hybrid_proofs([GroundID|T]) :-
findall(Interval,hybrid_proof(_,_,GroundID,Interval),Intervals),
intervals_partition(Intervals,Partition),
% go over all proofs where this fact occurs
forall(hybrid_proof(ProofID,ID,GroundID,Interval),
(
intervals_disjoin(Interval,Partition,PInterval),
assertz(hybrid_proof_disjoint(ProofID,ID,GroundID,PInterval))
)
),
disjoin_hybrid_proofs(T).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% End Hybrid
compute_bounds(LP, UP, Status) :-
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
nb_getval(problog_stopped_proofs, Trie_Stopped_Proofs),
eval_dnf(Trie_Completed_Proofs, LP, StatusLow),
(StatusLow \== ok ->
Status = StatusLow
;
merge_ptree(Trie_Completed_Proofs, Trie_Stopped_Proofs, Trie_All_Proofs),
nb_setval(problog_all_proofs, Trie_All_Proofs),
eval_dnf(Trie_All_Proofs, UP, Status)),
delete_ptree(Trie_Completed_Proofs),
delete_ptree(Trie_Stopped_Proofs),
delete_ptree(Trie_All_Proofs).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% approximate inference: lower bound based on all proofs above probability threshold
% problog_low(+Goal,+Threshold,-LowerBound,-Status)
%
% same as problog_threshold/5, but lower bound only (no stopped derivations stored)
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_low(Goal, Threshold, _, _) :-
init_problog_low(Threshold),
problog_control(off, up),
timer_start(sld_time),
problog_call(Goal),
add_solution,
fail.
problog_low(_, _, LP, Status) :-
timer_stop(sld_time,SLD_Time),
problog_var_set(sld_time, SLD_Time),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
%print_nested_ptree(Trie_Completed_Proofs),
eval_dnf(Trie_Completed_Proofs, LP, Status),
(problog_flag(verbose, true)->
problog_statistics
;
true
),
delete_ptree(Trie_Completed_Proofs),
(problog_flag(retain_tables, true) -> retain_tabling; true),
clear_tabling.
init_problog_low(Threshold) :-
init_ptree(Trie_Completed_Proofs),
nb_setval(problog_completed_proofs, Trie_Completed_Proofs),
init_problog(Threshold).
% generalizing problog_max to return all explanations, sorted by non-increasing probability
problog_all_explanations(Goal,Expl) :-
problog_all_explanations_unsorted(Goal,Unsorted),
keysort(Unsorted,Decreasing),
reverse(Decreasing,Expl).
problog_all_explanations_unsorted(Goal, _) :-
init_problog_low(0.0),
problog_control(off, up),
timer_start(sld_time),
problog_call(Goal),
add_solution,
fail.
problog_all_explanations_unsorted(_,Expl) :-
timer_stop(sld_time,SLD_Time),
problog_var_set(sld_time, SLD_Time),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
explanations_from_trie(Trie_Completed_Proofs,Expl).
% catch basecases
explanations_from_trie(Trie,[]) :-
empty_ptree(Trie),!.
explanations_from_trie(Trie,[1.0-[]]) :-
traverse_ptree(Trie,[true]),!.
explanations_from_trie(Trie_Completed_Proofs,Expl) :-
findall(Prob-Facts,
(traverse_ptree(Trie_Completed_Proofs,L),
findall(P,(member(A,L),get_fact_log_probability(A,P)),Ps),
sum_list(Ps,LS),
Prob is exp(LS),
get_fact_list(L,Facts)
),Expl).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% approximate inference: bounds by iterative deepening up to interval width Delta
% problog_delta(+Goal,+Delta,-LowerBound,-UpperBound,-Status)
%
% wraps iterative deepening around problog_threshold, i.e.
% - starts with threshold given by first_threshold flag
% - if Up-Low >= Delta, multiply threshold by factor given in id_stepsize flag and iterate
% (does not use problog_threshold as trie 1 is kept over entire search)
%
% local dynamic predicates low/2, up/2, stopDiff/1
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_delta(Goal, Delta, Low, Up, Status) :-
problog_flag(first_threshold,InitT),
init_problog_delta(InitT,Delta),
problog_control(on,up),
problog_delta_id(Goal,Status),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
nb_getval(problog_stopped_proofs, Trie_Stopped_Proofs),
delete_ptree(Trie_Completed_Proofs),
delete_ptree(Trie_Stopped_Proofs),
(retract(low(_,Low)) -> true; true),
(retract(up(_,Up)) -> true; true).
init_problog_delta(Threshold,Delta) :-
retractall(low(_,_)),
retractall(up(_,_)),
retractall(stopDiff(_)),
init_ptree(Trie_Completed_Proofs),
nb_setval(problog_completed_proofs, Trie_Completed_Proofs),
init_ptree(Trie_Stopped_Proofs),
nb_setval(problog_stopped_proofs, Trie_Stopped_Proofs),
assertz(low(0,0.0)),
assertz(up(0,1.0)),
assertz(stopDiff(Delta)),
init_problog(Threshold).
problog_delta_id(Goal, _) :-
problog_call(Goal),
add_solution, % reused from problog_threshold
fail.
problog_delta_id(Goal, Status) :-
evaluateStep(Ans,StatusE),
problog_flag(last_threshold_log,Stop),
nb_getval(problog_threshold,Min),
(StatusE \== ok ->
Status = StatusE
;
(
Ans = 1 ->
Status = ok
;
Min =< Stop ->
Status = stopreached
;
problog_control(check,limit) ->
problog_control(off,limit),
problog_flag(id_stepsize_log,Step),
New is Min+Step,
nb_setval(problog_threshold,New),
problog_delta_id(Goal, Status)
;
true
)).
% call the dnf evaluation where needed
evaluateStep(Ans,Status) :- once(evalStep(Ans,Status)).
evalStep(Ans,Status) :-
stopDiff(Delta),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
nb_getval(problog_stopped_proofs, Trie_Stopped_Proofs),
count_ptree(Trie_Completed_Proofs, NProofs),
count_ptree(Trie_Stopped_Proofs, NCands),
format_if_verbose(user,'~w proofs, ~w stopped derivations~n',[NProofs,NCands]),
eval_lower(NProofs,Low,StatusLow),
(
StatusLow \== ok
->
Status = StatusLow;
up(_, OUP),
IntDiff is OUP-Low,
((IntDiff < Delta; IntDiff =:= 0) ->
Up = OUP,
StatusUp = ok
;
eval_upper(NCands, Up, StatusUp),
delete_ptree(Trie_Stopped_Proofs),
init_ptree(New_Trie_Stopped_Proofs),
nb_setval(problog_stopped_proofs, New_Trie_Stopped_Proofs)
),
(StatusUp \== ok ->
Status = StatusUp
;
Diff is Up-Low,
format_if_verbose(user,'difference: ~6f~n',[Diff]),
((Diff < Delta; Diff =:= 0) -> Ans = 1; Ans = 0),
Status = ok
)
).
% no need to re-evaluate if no new proofs found on this level
eval_lower(N,P,ok) :-
low(N,P).
% evaluate if there are proofs
eval_lower(N,P,Status) :-
N > 0,
low(OldN,_),
N \= OldN,
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
eval_dnf(Trie_Completed_Proofs,P,Status),
(Status == ok ->
retract(low(_,_)),
assertz(low(N,P)),
format_if_verbose(user,'lower bound: ~6f~n',[P])
;
true).
% if no stopped derivations, up=low
eval_upper(0,P,ok) :-
retractall(up(_,_)),
low(N,P),
assertz(up(N,P)).
% else merge proofs and stopped derivations to get upper bound
% in case of timeout or other problems, skip and use bound from last level
eval_upper(N,UpP,ok) :-
N > 0,
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
nb_getval(problog_stopped_proofs, Trie_Stopped_Proofs),
merge_ptree(Trie_Completed_Proofs,Trie_Stopped_Proofs,Trie_All_Proofs),
nb_setval(problog_all_proofs, Trie_All_Proofs),
eval_dnf(Trie_All_Proofs,UpP,StatusUp),
delete_ptree(Trie_All_Proofs),
(StatusUp == ok ->
retract(up(_,_)),
assertz(up(N,UpP))
;
format_if_verbose(user,'~w - continue using old up~n',[StatusUp]),
up(_,UpP)
).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% explanation probability - returns list of facts used or constant 'unprovable' as third argument
% problog_max(+Goal,-Prob,-Facts)
%
% uses iterative deepening with samw parameters as bounding algorithm
% threshold gets adapted whenever better proof is found
%
% uses local dynamic predicates max_probability/1 and max_proof/1
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_max(Goal, Prob, Facts) :-
problog_flag(first_threshold,InitT),
init_problog_max(InitT),
problog_control(off,up),
problog_max_id(Goal, Prob, FactIDs),% theo todo
( FactIDs = [_|_] -> get_fact_list(FactIDs, Facts);
Facts = FactIDs).
init_problog_max(Threshold) :-
retractall(max_probability(_)),
retractall(max_proof(_)),
assertz(max_probability(-999999)),
assertz(max_proof(unprovable)),
init_problog(Threshold).
update_max :-
b_getval(problog_probability, CurrP),
max_probability(MaxP),
CurrP>MaxP,
b_getval(problog_current_proof, IDs),
open_end_close_end(IDs, R),
retractall(max_proof(_)),
assertz(max_proof(R)),
nb_setval(problog_threshold, CurrP),
retractall(max_probability(_)),
assertz(max_probability(CurrP)).
problog_max_id(Goal, _Prob, _Clauses) :-
problog_call(Goal),
update_max,
fail.
problog_max_id(Goal, Prob, Clauses) :-
max_probability(MaxP),
nb_getval(problog_threshold, LT),
problog_flag(last_threshold_log, ToSmall),
((MaxP >= LT; \+ problog_control(check, limit); LT < ToSmall) ->
((max_proof(unprovable), problog_control(check,limit), LT < ToSmall) ->
problog_flag(last_threshold, Stopping),
Clauses = unprovable(Stopping)
;
max_proof(Clauses)
),
Prob is exp(MaxP)
;
problog_flag(id_stepsize_log, Step),
NewLT is LT + Step,
nb_setval(problog_threshold, NewLT),
problog_control(off, limit),
problog_max_id(Goal, Prob, Clauses)
).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% lower bound using k best proofs
% problog_kbest(+Goal,+K,-Prob,-Status)
%
% does iterative deepening search similar to problog_max, but for k(>=1) most likely proofs
% afterwards uses BDD evaluation to calculate probability (also for k=1 -> uniform treatment in learning)
%
% uses dynamic local predicate current_kbest/3 to collect proofs,
% only builds trie at the end (as probabilities of single proofs are important here)
%
% note: >k proofs will be used if the one at position k shares its probability with others,
% as all proofs with that probability will be included
%
% version with _save at the end renames files for problogbdd to keep them
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_kbest_save(Goal, K, Prob, Status, BDDFile, ParamFile) :-
problog_flag(dir, InternWorkingDir),
problog_flag(bdd_file, InternBDDFlag),
problog_flag(bdd_par_file, InternParFlag),
split_path_file(BDDFile, WorkingDir, BDDFileName),
split_path_file(ParamFile, _WorkingDir, ParamFileName),
flag_store(dir, WorkingDir),
flag_store(bdd_file, BDDFileName),
flag_store(bdd_par_file, ParamFileName),
problog_kbest(Goal, K, Prob, Status),
flag_store(dir, InternWorkingDir),
flag_store(bdd_file, InternBDDFlag),
flag_store(bdd_par_file, InternParFlag).
% ( Status=ok ->
% problog_flag(bdd_file,InternBDDFlag),
% problog_flag(bdd_par_file,InternParFlag),
% convert_filename_to_working_path(InternBDDFlag, InternBDD),
% convert_filename_to_working_path(InternParFlag, InternPar),
% rename_file(InternBDD,BDDFile),
% rename_file(InternPar,ParamFile)
% ;
% true).
problog_kbest(Goal, K, Prob, Status) :-
problog_flag(first_threshold,InitT),
init_problog_kbest(InitT),
problog_control(off,up),
problog_kbest_id(Goal, K),
retract(current_kbest(_,ListFound,_NumFound)),
build_prefixtree(ListFound),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
eval_dnf(Trie_Completed_Proofs,Prob,Status),
delete_ptree(Trie_Completed_Proofs).
% generalizes problog_max to return the k best explanations
problog_kbest_explanations(Goal, K, Explanations) :-
problog_flag(first_threshold,InitT),
init_problog_kbest(InitT),
problog_control(off,up),
problog_kbest_id(Goal, K),
retract(current_kbest(_,ListFound,_NumFound)),
to_external_format_with_reverse(ListFound,Explanations).
problog_real_kbest(Goal, K, Prob, Status) :-
problog_flag(first_threshold,InitT),
init_problog_kbest(InitT),
problog_control(off,up),
problog_kbest_id(Goal, K),
retract(current_kbest(_,RawListFound,NumFound)),
% limiting the number of proofs is not only needed for fast SLD resolution but also for fast BDD building.
% one can't assume that kbest is called for the former and not for the latter
take_k_best(RawListFound,K,NumFound,ListFound),
build_prefixtree(ListFound),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
eval_dnf(Trie_Completed_Proofs,Prob,Status),
delete_ptree(Trie_Completed_Proofs).
init_problog_kbest(Threshold) :-
retractall(current_kbest(_,_,_)),
assertz(current_kbest(-999999,[],0)), %(log-threshold,proofs,num_proofs)
init_ptree(Trie_Completed_Proofs),
nb_setval(problog_completed_proofs, Trie_Completed_Proofs),
init_problog(Threshold).
problog_kbest_id(Goal, K) :-
problog_call(Goal),
update_kbest(K),
fail.
problog_kbest_id(Goal, K) :-
current_kbest(CurrentBorder,_,Found),
nb_getval(problog_threshold, Min),
problog_flag(last_threshold_log,ToSmall),
((Found>=K ; \+ problog_control(check,limit) ; Min < CurrentBorder ; Min < ToSmall) ->
true
;
problog_flag(id_stepsize_log,Step),
NewLT is Min+Step,
nb_setval(problog_threshold, NewLT),
problog_control(off,limit),
problog_kbest_id(Goal, K)).
update_kbest(K) :-
b_getval(problog_probability,NewLogProb),
current_kbest(LogThreshold,_,_),
NewLogProb>=LogThreshold,
b_getval(problog_current_proof,RevProof),
open_end_close_end(RevProof,Proof),
update_current_kbest(K,NewLogProb,Proof).
update_current_kbest(_,NewLogProb,Cl) :-
current_kbest(_,List,_),
memberchk(NewLogProb-Cl,List),
!.
update_current_kbest(K,NewLogProb,Cl) :-
retract(current_kbest(OldThres,List,Length)),
sorted_insert(NewLogProb-Cl,List,NewList),
NewLength is Length+1,
(NewLength < K ->
assertz(current_kbest(OldThres,NewList,NewLength))
;
(NewLength>K ->
First is NewLength-K+1,
cutoff(NewList,NewLength,First,FinalList,FinalLength)
; FinalList=NewList, FinalLength=NewLength),
FinalList=[NewThres-_|_],
nb_setval(problog_threshold,NewThres),
assertz(current_kbest(NewThres,FinalList,FinalLength))).
sorted_insert(A,[],[A]).
sorted_insert(A-LA,[B1-LB1|B], [A-LA,B1-LB1|B] ) :-
A =< B1.
sorted_insert(A-LA,[B1-LB1|B], [B1-LB1|C] ) :-
A > B1,
sorted_insert(A-LA,B,C).
% keeps all entries with lowest probability, even if implying a total of more than k
cutoff(List,Len,1,List,Len) :- !.
cutoff([P-L|List],Length,First,[P-L|List],Length) :-
nth1(First,[P-L|List],PF-_),
PF=:=P,
!.
cutoff([_|List],Length,First,NewList,NewLength) :-
NextFirst is First-1,
NextLength is Length-1,
cutoff(List,NextLength,NextFirst,NewList,NewLength).
build_prefixtree([]).
build_prefixtree([_-[]|_List]) :-
!,
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
insert_ptree(true,Trie_Completed_Proofs).
build_prefixtree([LogP-L|List]) :-
(
problog_flag(show_proofs,true)
->
get_fact_list(L,ListOfFacts),
P is exp(LogP),
format(user,'~q ~q~n',[P,ListOfFacts])
;
true
),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
insert_ptree(L,Trie_Completed_Proofs),
build_prefixtree(List).
take_k_best(In,K,OutOf,Out) :-
(
K>=OutOf
->
In = Out;
In = [_|R],
OutOf2 is OutOf-1,
take_k_best(R,K,OutOf2,Out)
).
to_external_format_with_reverse(Intern,Extern) :-
to_external_format_with_reverse(Intern,[],Extern).
to_external_format_with_reverse([],Extern,Extern).
to_external_format_with_reverse([LogP-FactIDs|Intern],Acc,Extern) :-
Prob is exp(LogP),
( FactIDs = [_|_] -> get_fact_list(FactIDs, Facts);
Facts = FactIDs),
to_external_format_with_reverse(Intern,[Prob-Facts|Acc],Extern).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% exact probability
% problog_exact(+Goal,-Prob,-Status)
%
% using all proofs = using all proofs with probability > 0
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_exact(Goal,Prob,Status) :-
problog_control(on, exact),
problog_low(Goal,0,Prob,Status),
problog_control(off, exact).
problog_exact_save(Goal,Prob,Status,BDDFile,ParamFile) :-
problog_flag(dir, InternWorkingDir),
problog_flag(bdd_file, InternBDDFlag),
problog_flag(bdd_par_file, InternParFlag),
split_path_file(BDDFile, WorkingDir, BDDFileName),
split_path_file(ParamFile, _WorkingDir, ParamFileName),
flag_store(dir, WorkingDir),
flag_store(bdd_file, BDDFileName),
flag_store(bdd_par_file, ParamFileName),
problog_control(on, exact),
problog_low(Goal,0,Prob,Status),
problog_control(off, exact),
flag_store(dir, InternWorkingDir),
flag_store(bdd_file, InternBDDFlag),
flag_store(bdd_par_file, InternParFlag).
% (
% Status==ok
% ->
% (
% problog_flag(bdd_file,InternBDDFlag),
% problog_flag(bdd_par_file,InternParFlag),
% problog_flag(dir,DirFlag),
% atomic_concat([DirFlag,InternBDDFlag],InternBDD),
% atomic_concat([DirFlag,InternParFlag],InternPar),
% rename_file(InternBDD,BDDFile),
% rename_file(InternPar,ParamFile)
% );
% true
% ).
problog_collect_trie(Goal):-
problog_call(Goal),
add_solution,
fail.
problog_collect_trie(_Goal).
problog_save_state(State):-
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
nb_getval(problog_current_proof, IDs),
recordz(problog_stack, store(Trie_Completed_Proofs, IDs), State),
init_ptree(Sub_Trie_Completed_Proofs),
nb_setval(problog_completed_proofs, Sub_Trie_Completed_Proofs),
nb_setval(problog_current_proof, []).
problog_restore_state(State):-
recorded(problog_stack, store(Trie_Completed_Proofs, IDs), State),
erase(State),
nb_setval(problog_completed_proofs, Trie_Completed_Proofs),
nb_setval(problog_current_proof, IDs).
problog_exact_nested(Goal, Prob, Status):-
problog_save_state(State),
problog_collect_trie(Goal),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
/* writeln(Goal),
print_nested_ptree(Trie_Completed_Proofs),*/
eval_dnf(Trie_Completed_Proofs, Prob, Status),
delete_ptree(Trie_Completed_Proofs),
problog_restore_state(State).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% probability by sampling:
% running another N samples until 95percentCI-width<Delta
% lazy sampling using three-valued array indexed by internal fact IDs for ground facts,
% internal database keys mc_true and mc_false for groundings of non-ground facts (including dynamic probabilities)
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_montecarlo(Goal,Delta,Prob) :-
retractall(mc_prob(_)),
nb_getval(probclause_counter,ID), !,
C is ID+1,
static_array(mc_sample,C,char),
problog_control(off,up),
problog_flag(mc_batchsize,N),
problog_flag(mc_logfile,File1),
convert_filename_to_working_path(File1, File),
montecarlo(Goal,Delta,N,File),
retract(mc_prob(Prob)),
close_static_array(mc_sample).
montecarlo(Goal,Delta,K,File) :-
clean_sample,
problog_control(on,mc),
open(File,write,Log),
format(Log,'# goal: ~q~n#delta: ~w~n',[Goal,Delta]),
format(Log,'# num_programs prob low high diff time~2n',[]),
close(Log),
timer_reset(monte_carlo),
timer_start(monte_carlo),
format_if_verbose(user,'search for ~q~n',[Goal]),
montecarlo(Goal,Delta,K,0,File,0),
timer_stop(monte_carlo,_Monte_Carlo_Time),
problog_control(off,mc).
% calculate values after K samples
montecarlo(Goal,Delta,K,SamplesSoFar,File,PositiveSoFar) :-
SamplesNew is SamplesSoFar+1,
SamplesNew mod K =:= 0,
!,
copy_term(Goal,GoalC),
(
mc_prove(GoalC)
->
Next is PositiveSoFar+1;
Next=PositiveSoFar
),
Prob is Next/SamplesNew,
timer_elapsed(monte_carlo,Time),
problog_convergence_check(Time, Prob, SamplesNew, Delta, _Epsilon, Converged),
(
(Converged == true; Converged == terminate)
->
format_if_verbose(user,'Runtime ~w ms~2n',[Time]),
assertz(mc_prob(Prob))
;
montecarlo(Goal,Delta,K,SamplesNew,File,Next)
).
% continue until next K samples done
montecarlo(Goal,Delta,K,SamplesSoFar,File,PositiveSoFar) :-
SamplesNew is SamplesSoFar+1,
copy_term(Goal,GoalC),
(mc_prove(GoalC) -> Next is PositiveSoFar+1; Next=PositiveSoFar),
montecarlo(Goal,Delta,K,SamplesNew,File,Next).
mc_prove(A) :- !,
(get_some_proof(A) ->
clean_sample
;
clean_sample,fail
).
clean_sample :-
reset_static_array(mc_sample),
eraseall(mc_true),
eraseall(mc_false),
reset_non_ground_facts,
% problog_abolish_all_tables.
problog_tabled(P),
problog_abolish_table(P),
fail.
clean_sample.
% find new proof -- need to reset control after init
get_some_proof(Goal) :-
init_problog(0),
problog_control(on,mc),
problog_call(Goal).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% exact probability of all ground instances of Goal
% output goes to File
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_answers(Goal,File) :-
set_problog_flag(verbose,false),
retractall(answer(_)),
% this will not give the exact prob of Goal!
problog_exact((Goal,ground(Goal),\+problog:answer(Goal),assertz(problog:answer(Goal))),_,_),
open(File,write,_,[alias(answer)]),
eval_answers,
close(answer).
eval_answers :-
retract(answer(G)),
problog_exact(G,P,_),
format(answer,'answer(~q,~w).~n',[G,P]),
fail.
eval_answers.
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% find k most likely different answers (using their explanation prob as score)
% largely copied+adapted from kbest, uses same dynamic predicate
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_kbest_answers(Goal,K,ResultList) :-
problog_flag(first_threshold,InitT),
init_problog_kbest(InitT),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
delete_ptree( Trie_Completed_Proofs), % this is just because we reuse init from kbest and don't need the tree
problog_control(off,up),
problog_kbest_answers_id(Goal, K),
retract(current_kbest(_,LogResultList,_NumFound)),
transform_loglist_to_result(LogResultList,ResultList).
problog_kbest_answers_id(Goal, K) :-
problog_call(Goal),
copy_term(Goal,GoalCopy), % needed?
update_kbest_answers(GoalCopy,K),
fail.
problog_kbest_answers_id(Goal, K) :-
current_kbest(CurrentBorder,_,Found),
nb_getval(problog_threshold, Min),
problog_flag(last_threshold_log,ToSmall),
((Found>=K ; \+ problog_control(check,limit) ; Min < CurrentBorder ; Min < ToSmall) ->
true
;
problog_flag(id_stepsize_log,Step),
NewLT is Min+Step,
nb_setval(problog_threshold, NewLT),
problog_control(off,limit),
problog_kbest_answers_id(Goal, K)).
update_kbest_answers(Goal,K) :-
b_getval(problog_probability,NewLogProb),
current_kbest(LogThreshold,_,_),
NewLogProb>=LogThreshold,
update_current_kbest_answers(K,NewLogProb,Goal).
update_current_kbest_answers(_,NewLogProb,Goal) :-
current_kbest(_,List,_),
update_prob_of_known_answer(List,Goal,NewLogProb,NewList),
!,
keysort(NewList,SortedList),%format(user_error,'updated variant of ~w~n',[Goal]),
retract(current_kbest(K,_,Len)),
assertz(current_kbest(K,SortedList,Len)).
update_current_kbest_answers(K,NewLogProb,Goal) :-
retract(current_kbest(OldThres,List,Length)),
sorted_insert(NewLogProb-Goal,List,NewList),%format(user_error,'inserted new element ~w~n',[Goal]),
NewLength is Length+1,
(NewLength < K ->
assertz(current_kbest(OldThres,NewList,NewLength))
;
(NewLength>K ->
First is NewLength-K+1,
cutoff(NewList,NewLength,First,FinalList,FinalLength)
; FinalList=NewList, FinalLength=NewLength),
FinalList=[NewThres-_|_],
nb_setval(problog_threshold,NewThres),
assertz(current_kbest(NewThres,FinalList,FinalLength))).
% this fails if there is no variant -> go to second case above
update_prob_of_known_answer([OldLogP-OldGoal|List],Goal,NewLogProb,[MaxLogP-OldGoal|List]) :-
variant(OldGoal,Goal),
!,
MaxLogP is max(OldLogP,NewLogProb).
update_prob_of_known_answer([First|List],Goal,NewLogProb,[First|NewList]) :-
update_prob_of_known_answer(List,Goal,NewLogProb,NewList).
transform_loglist_to_result(In,Out) :-
transform_loglist_to_result(In,[],Out).
transform_loglist_to_result([],Acc,Acc).
transform_loglist_to_result([LogP-G|List],Acc,Result) :-
P is exp(LogP),
transform_loglist_to_result(List,[P-G|Acc],Result).
%%%%%%%%%%%%%%%%%%%%%%%%%
% koptimal
%%%%%%%%%%%%%%%%%%%%%%%%%
problog_koptimal(Goal,K,Prob) :-
problog_flag(last_threshold, InitT),
problog_koptimal(Goal,K,InitT,Prob).
problog_koptimal(Goal,K,Theta,Prob) :-
init_problog_koptimal,
problog_koptimal_it(Goal,K,Theta),
nb_getval(problog_completed_proofs,Trie_Completed_Proofs),
optimal_proof(_,Prob),
set_problog_flag(save_bdd, false),
set_problog_flag(nodedump_bdd, false),
delete_ptree(Trie_Completed_Proofs),
nb_getval(dtproblog_completed_proofs,DT_Trie_Completed_Proofs),
delete_ptree(DT_Trie_Completed_Proofs),
clear_tabling.
init_problog_koptimal :-
%Set the reuse flag on true in order to retain the calculated bdd's
set_problog_flag(save_bdd, true),
set_problog_flag(nodedump_bdd, true),
%Initialise the trie
init_ptree(Trie_Completed_Proofs),
nb_setval(problog_completed_proofs, Trie_Completed_Proofs),
init_ptree(Trie_DT_Completed_Proofs),
nb_setval(dtproblog_completed_proofs,Trie_DT_Completed_Proofs),
problog_control(off,up),
%Initialise the control parameters
retractall(possible_proof(_,_)),
retractall(impossible_proof(_)).
problog_koptimal_it(Goal,K,Theta) :-
K > 0,
init_problog_koptimal_it(Theta),
%add optimal proof, this fails when no new proofs can be found
(add_optimal_proof(Goal,Theta) -> Knew is K - 1; Knew = 0),!,
problog_koptimal_it(Goal,Knew,Theta).
problog_koptimal_it(_,0,_).
init_problog_koptimal_it(Theta) :-
%Clear the tables
abolish_table(conditional_prob/4),
%initialise problog
init_problog(Theta),
%retract control parameters for last iteration
retractall(optimal_proof(_,_)),
retractall(current_prob(_)),
%calculate the bdd with the additional found proof
nb_getval(problog_completed_proofs,Trie_Completed_Proofs),
eval_dnf(Trie_Completed_Proofs,PCurr,_),
%set the current probability
assert(current_prob(PCurr)),
assert(optimal_proof(unprovable,PCurr)),
%use the allready found proofs to initialise the threshold
findall(Proof-MaxAddedP,possible_proof(Proof,MaxAddedP),PossibleProofs),
sort_possible_proofs(PossibleProofs,SortedPossibleProofs),
initialise_optimal_proof(SortedPossibleProofs,Theta).
sort_possible_proofs(List,Sorted):-sort_possible_proofs(List,[],Sorted).
sort_possible_proofs([],Acc,Acc).
sort_possible_proofs([H|T],Acc,Sorted):-
pivoting(H,T,L1,L2),
sort_possible_proofs(L1,Acc,Sorted1),sort_possible_proofs(L2,[H|Sorted1],Sorted).
pivoting(_,[],[],[]).
pivoting(Pivot-PPivot,[Proof-P|T],[Proof-P|G],L):-P=<PPivot,pivoting(Pivot-PPivot,T,G,L).
pivoting(Pivot-PPivot,[Proof-P|T],G,[Proof-P|L]):-P>PPivot,pivoting(Pivot-PPivot,T,G,L).
initialise_optimal_proof([],_).
initialise_optimal_proof([Proof-MaxAdded|Rest],Theta) :-
optimal_proof(_,Popt),
current_prob(Pcurr),
OptAdded is Popt - Pcurr,
(MaxAdded > OptAdded ->
calculate_added_prob(Proof, P,ok),
%update the maximal added probability
retractall(possible_proof(Proof,_)),
AddedP is P - Pcurr,
(AddedP > Theta ->
%the proof can still add something
assert(possible_proof(Proof,AddedP)),
%Check whether to change the optimal proof
(P > Popt ->
retractall(optimal_proof(_,_)),
assert(optimal_proof(Proof,P)),
NewT is log(AddedP),
nb_setval(problog_threshold,NewT)
;
true
)
;
%the proof cannot add anything anymore
assert(impossible_proof(Proof))
),
initialise_optimal_proof(Rest,Theta)
;
%The rest of the proofs have a maximal added probability smaller then the current found optimal added probability
true
).
add_optimal_proof(Goal,Theta) :-
problog_call(Goal),
update_koptimal(Theta).
add_optimal_proof(_,_) :-
optimal_proof(Proof,_),
((Proof = unprovable) ->
%No possible proof is present
fail
;
%We add the found to the trie
remove_decision_facts(Proof, PrunedProof),
nb_setval(problog_current_proof, PrunedProof-[]),
(PrunedProof = [] -> true ; add_solution),
nb_getval(dtproblog_completed_proofs,DT_Trie_Completed_Proofs),
insert_ptree(Proof, DT_Trie_Completed_Proofs),
retract(possible_proof(Proof,_)),
assert(impossible_proof(Proof))
).
update_koptimal(Theta) :-
%We get the found proof and the already found proofs
b_getval(problog_current_proof, OpenProof),
open_end_close_end(OpenProof, Proof),
((possible_proof(Proof,_); impossible_proof(Proof)) ->
%The proof is already treated in the initialization step
fail
;
%The proof isn't yet treated
calculate_added_prob(Proof,P,ok),
optimal_proof(_,Popt),
current_prob(PCurr),
AddedP is P - PCurr,
(AddedP > Theta ->
assert(possible_proof(Proof,AddedP))
;
%The proof has an additional probability smaller than theta so gets blacklisted
assert(impossible_proof(Proof)),
fail
),
(P > Popt ->
%We change the curret optimal proof with the found proof
retractall(optimal_proof(_,_)),
assert(optimal_proof(Proof,P)),
NewT is log(AddedP),
nb_setval(problog_threshold,NewT),
fail
;
%The proof isn't better then the current optimal proof so we stop searching
fail
)
).
remove_decision_facts([Fact|Proof], PrunedProof) :-
remove_decision_facts(Proof,RecPruned),
catch((get_fact_probability(Fact,_),PrunedProof = [Fact|RecPruned]),_,PrunedProof = RecPruned).
remove_decision_facts([],[]).
calculate_added_prob([],P,ok) :-
current_prob(P).
calculate_added_prob(Proof,P,S) :-
Proof \= [],
remove_decision_facts(Proof,PrunedProof),
remove_used_facts(PrunedProof,Used,New),
bubblesort(Used,SortedUsed),
calculate_added_prob(SortedUsed,New,[],PAdded,S),
round_added_prob(PAdded,P).
calculate_added_prob([],[],_,1,ok).
calculate_added_prob([UsedFact|UsedProof],[],Conditions,P,S) :-
calculate_added_prob(UsedProof,[],[UsedFact|Conditions],Prec,Srec),
problog_flag(nodedump_file,NodeDumpFile),
convert_filename_to_working_path(NodeDumpFile, SONodeDumpFile),
convert_filename_to_working_path('save_params', ParFile),
negate(UsedFact,NegatedFact),
conditional_prob(SONodeDumpFile,ParFile,[NegatedFact|Conditions],Pcond,Scond),
( Srec = ok ->
( Scond = ok ->
S = ok,
get_fact_probability(UsedFact,Pfact),
P is Pfact*Prec + (1 - Pfact)*Pcond
;
S = Scond
)
;
S = Srec
).
calculate_added_prob(UsedProof,[NewFact|NewFacts],[],P,S) :-
calculate_added_prob(UsedProof,NewFacts,[],Prec,S),
( S = ok ->
get_fact_probability(NewFact,Pfact),
current_prob(Pcurr),
P is Pfact*Prec + (1 - Pfact)*Pcurr
;
true
).
bubblesort(List,Sorted):-
swap(List,List1),!,
bubblesort(List1,Sorted).
bubblesort(Sorted,Sorted).
swap([X,Y|Rest], [Y,X|Rest]):- bigger(X,Y).
swap([Z|Rest],[Z|Rest1]):- swap(Rest,Rest1).
bigger(not(X), X) :-
!.
bigger(not(X), not(Y)) :-
!,
bigger(X,Y).
bigger(not(X),Y) :-
!,
bigger(X,Y).
bigger(X, not(Y)) :-
!,
bigger(X,Y).
bigger(X,Y) :-
split_grounding_id(X,IDX,GIDX),
split_grounding_id(Y,IDY,GIDY),!,
(
IDX > IDY
;
IDX == IDY,
GIDX > GIDY
).
bigger(X,Y) :-
split_grounding_id(X,IDX,_),!,
IDX > Y.
bigger(X,Y) :-
split_grounding_id(Y,IDY,_),!,
X > IDY.
bigger(X,Y) :-
X > Y.
round_added_prob(P,RoundedP) :-
P < 1,
Pnew is P*10,
round_added_prob(Pnew,RoundedPnew),
RoundedP is RoundedPnew/10.
round_added_prob(P,RoundedP) :-
P >= 1,
RoundedP is round(P*1000000)/1000000.
negate(not(Fact),Fact).
negate(Fact,not(Fact)) :-
Fact \= not(_).
remove_used_facts([],[],[]).
remove_used_facts([Fact|Rest],Used,New) :-
remove_used_facts(Rest,RecUsed,RecNew),
used_facts(Facts),
(member(Fact,Facts) ->
Used = [Fact|RecUsed],
New = RecNew
;
Used = RecUsed,
New = [Fact|RecNew]
).
used_fact(Fact) :-
used_facts(Facts),
member(Fact,Facts).
used_facts(Facts) :-
convert_filename_to_working_path('save_map', MapFile),
see(MapFile),
read(mapping(L)),
findall(Var,member(m(Var,_,_),L),Facts),
seen.
conditional_prob(_,_,[],P,ok) :-
current_prob(P).
conditional_prob(NodeDump,ParFile,Conditions,P,S) :-
problog_flag(save_bdd,Old_Save),
problog_flag(nodedump_bdd,Old_File),
set_problog_flag(save_bdd, false),
set_problog_flag(nodedump_bdd, false),
convert_filename_to_working_path('temp_par_file', ChangedParFile),
change_par_file(ParFile,Conditions,ChangedParFile),
execute_bdd_tool(NodeDump,ChangedParFile,P,S),
%delete_file(ChangedParFile),
set_problog_flag(save_bdd,Old_Save),
set_problog_flag(nodedump_bdd,Old_File).
change_par_file(ParFile,[],ChangedParFile) :-
%atomic_concat(['cp ', ParFile, ' ', ChangedParFile],Command),
%statistics(walltime,[T1,_]),
%shell(Command,_),
copy_file(ParFile,ChangedParFile).
%statistics(walltime,[T2,_]),
%T is T2 - T1,
%format("copy time: ~w\n",[T]).
change_par_file(ParFile,[ID|Rest],ChangedParFile) :-
ID \= not(_),
change_par_file(ParFile,Rest,ChangedParFile),
open(ChangedParFile,'append',S),
tell(S),
format('@x~w\n1\n',[ID]),
told.
change_par_file(ParFile,[not(ID)|Rest],ChangedParFile) :-
change_par_file(ParFile,Rest,ChangedParFile),
open(ChangedParFile,'append',S),
tell(S),
format('@x~w\n0\n',[ID]),
told.
% Copies a file
copy_file(From,To) :-
file_filter(From,To,copy_aux).
copy_aux(In,In).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% GENERAL PURPOSE PREDICATES FOR DTPROBLOG
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Do inference of a single goal, using the default inference method
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_infer(Goal,Prob) :-
problog_flag(inference,Method),
problog_infer(Method,Goal,Prob).
problog_infer(exact,Goal,Prob) :-
problog_exact(Goal,Prob,ok).
problog_infer(atleast-K-best,Goal,Prob) :-
problog_kbest(Goal,K,Prob,ok).
problog_infer(K-best,Goal,Prob) :-
problog_real_kbest(Goal,K,Prob,ok).
problog_infer(montecarlo(Confidence),Goal,Prob) :-
problog_montecarlo(Goal,Confidence,Prob).
problog_infer(delta(Width),Goal,Prob) :-
problog_delta(Goal,Width,Bound_low,Bound_up,ok),
Prob is 0.5*(Bound_low+Bound_up).
problog_infer(low(Threshold),Goal,Prob) :-
problog_low(Goal,Threshold,Prob,ok).
problog_infer(threshold(Threshold),Goal,Prob) :-
problog_threshold(Goal,Threshold,Bound_low,Bound_up,ok),
Prob is 0.5*(Bound_low+Bound_up).
problog_infer(K-optimal,Goal,Prob) :-
problog_koptimal(Goal,K,Prob).
problog_infer(K-T-optimal,Goal,Prob) :-
problog_koptimal(Goal,K,T,Prob).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Do inference of a set of queries, using the default inference method
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_infer_forest([],[]) :- !.
problog_infer_forest(Goals,Probs) :-
(problog_infer_forest_supported ->
problog_bdd_forest(Goals),
length(Goals,N),
eval_bdd_forest(N,Probs,ok)
;
throw(error('Flag settings not supported by problog_infer_forest/1.'))
).
problog_infer_forest_supported :- problog_bdd_forest_supported.
eval_bdd_forest(N,Probs,Status) :-
bdd_files(BDDFile,BDDParFile),
problog_flag(bdd_time,BDDTime),
(problog_flag(dynamic_reorder, true) ->
ParamD = ''
;
ParamD = ' -dreorder'
),
(problog_flag(bdd_static_order, true) ->
problog_flag(static_order_file, FileName),
convert_filename_to_working_path(FileName, SOFileName),
atomic_concat([ParamD, ' -sord ', SOFileName], Param)
;
Param = ParamD
),
convert_filename_to_problog_path('problogbdd', ProblogBDD),
problog_flag(bdd_result,ResultFileFlag),
convert_filename_to_working_path(ResultFileFlag, ResultFile),
atomic_concat([ProblogBDD, Param,' -l ', BDDFile, ' -i ', BDDParFile, ' -m p -t ', BDDTime, ' > ', ResultFile], Command),
statistics(walltime,_),
shell(Command,Return),
(Return =\= 0 ->
Status = timeout
;
statistics(walltime,[_,E3]),
format_if_verbose(user,'~w ms BDD processing~n',[E3]),
see(ResultFile),
read_probs(N,Probs),
seen,
Status = ok,
% cleanup
% TODO handle flag for keeping files
(problog_flag(save_bdd,true) ->
true
;
catch(delete_file(BDDFile),_, fail),
catch(delete_file(BDDParFile),_, fail),
catch(delete_file(ResultFile),_, fail),
delete_bdd_forest_files(N)
)
).
read_probs(N,Probs) :-
(N = 0 ->
Probs = []
;
Probs = [Prob|Rest],
read(probability(Prob)),
N2 is N-1,
read_probs(N2,Rest)
).
delete_bdd_forest_files(N) :-
(N=0 ->
true
;
bdd_forest_file(N,BDDFile),
catch(delete_file(BDDFile),_, fail),
N2 is N-1,
delete_bdd_forest_files(N2)
).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Build a trie using the default inference method
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
build_trie(Goal, Trie) :-
(build_trie_supported ->
problog_flag(inference,Method),
once(build_trie(Method, Goal, Trie))
;
throw(error('Flag settings not supported by build_trie/2.'))
).
build_trie_supported :- problog_flag(inference,exact).
build_trie_supported :- problog_flag(inference,low(_)).
build_trie_supported :- problog_flag(inference,atleast-_-best).
build_trie_supported :- problog_flag(inference,_-best).
build_trie_supported :- problog_flag(inference,_-optimal).
build_trie_supported :- problog_flag(inference,_-_-optimal).
build_trie(exact, Goal, Trie) :-
problog_control(on, exact),
build_trie(low(0), Goal, Trie),
problog_control(off, exact).
build_trie(low(Threshold), Goal, _) :-
number(Threshold),
init_problog_low(Threshold),
problog_control(off, up),
timer_start(build_tree_low),
problog_call(Goal),
add_solution,
fail.
build_trie(low(Threshold), _, Trie) :-
number(Threshold),
timer_stop(build_tree_low,Build_Tree_Low),
problog_var_set(sld_time, Build_Tree_Low),
nb_getval(problog_completed_proofs, Trie).
% don't clear tabling; tables can be reused by other query
build_trie(atleast-K-best, Goal, Trie) :-
number(K),
problog_flag(first_threshold,InitT),
init_problog_kbest(InitT),
problog_control(off,up),
problog_kbest_id(Goal, K),
retract(current_kbest(_,ListFound,_NumFound)),
build_prefixtree(ListFound),
nb_getval(problog_completed_proofs, Trie),
clear_tabling. % clear tabling because tables cannot be reused by other query
build_trie(K-best, Goal, Trie) :-
number(K),
problog_flag(first_threshold,InitT),
init_problog_kbest(InitT),
problog_control(off,up),
problog_kbest_id(Goal, K),
retract(current_kbest(_,RawListFound,NumFound)),
% limiting the number of proofs is not only needed for fast SLD resolution but also for fast BDD building.
% one can't assume that kbest is called for the former and not for the latter
% thus, we take EXACTLY k proofs
take_k_best(RawListFound,K,NumFound,ListFound),
build_prefixtree(ListFound),
nb_getval(problog_completed_proofs, Trie),
clear_tabling. % clear tabling because tables cannot be reused by other query
build_trie(K-optimal, Goal, Trie) :-
number(K),
init_problog_koptimal,
problog_flag(last_threshold, InitT),
problog_koptimal_it(Goal,K,InitT),
set_problog_flag(save_bdd, false),
set_problog_flag(nodedump_bdd, false),
nb_getval(problog_completed_proofs,Trie_Completed_Proofs),
delete_ptree(Trie_Completed_Proofs),
nb_getval(dtproblog_completed_proofs,Trie),
clear_tabling.
build_trie(K-T-optimal, Goal, Trie) :-
number(K),
init_problog_koptimal,
problog_koptimal_it(Goal,K,T),
set_problog_flag(save_bdd, false),
set_problog_flag(nodedump_bdd, false),
nb_getval(problog_completed_proofs,Trie_Completed_Proofs),
delete_ptree(Trie_Completed_Proofs),
nb_getval(dtproblog_completed_proofs,Trie),
clear_tabling.
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Write BDD structure script for a trie and list all variables used
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
write_bdd_struct_script(Trie,BDDFile,Variables) :-
(
hybrid_proof(_,_,_) % Check whether we use Hybrid ProbLog
->
(
% Yes! run the disjoining stuff
retractall(hybrid_proof_disjoint(_,_,_,_)),
disjoin_hybrid_proofs,
init_ptree(OriTrie), % use this as tmp ptree
forall(enum_member_ptree(List,OriTrie1), % go over all stored proofs
(
(
List=[_|_]
->
Proof=List;
Proof=[List]
),
(
select(continuous(ProofID),Proof,Rest)
->
(
% this proof is using continuous facts
all_hybrid_subproofs(ProofID,List2),
append(Rest,List2,NewProof),
insert_ptree(NewProof,OriTrie)
);
insert_ptree(Proof,OriTrie)
)
)
)
);
% Nope, just pass on the Trie
OriTrie=OriTrie1
),
((problog_flag(variable_elimination, true), nb_getval(problog_nested_tries, false)) ->
statistics(walltime, _),
trie_check_for_and_cluster(OriTrie),
statistics(walltime, [_, VariableEliminationTime]),
trie_replace_and_cluster(OriTrie, Trie),
problog_var_set(variable_elimination_time, VariableEliminationTime),
variable_elimination_stats(Clusters, OrigPF, CompPF),
problog_var_set(variable_elimination_stats, compress(Clusters, OrigPF, CompPF)),
clean_up
;
Trie = OriTrie
),
(problog_flag(bdd_static_order, true) ->
get_order(Trie, Order),
problog_flag(static_order_file, SOFName),
convert_filename_to_working_path(SOFName, SOFileName),
generate_order_by_prob_fact_appearance(Order, SOFileName)
;
true
),
ptree:trie_stats(Memory, Tries, Entries, Nodes),
(nb_getval(problog_nested_tries, false) ->
ptree:trie_usage(Trie, TEntries, TNodes, TVirtualNodes),
problog_var_set(trie_statistics, tries(memory(Memory), tries(Tries), entries(TEntries), nodes(TNodes), virtualnodes(TVirtualNodes)))
;
problog_var_set(trie_statistics, tries(memory(Memory), tries(Tries), entries(Entries), nodes(Nodes)))
),
(problog_flag(triedump, true) ->
convert_filename_to_working_path(trie_file, TrieFile),
tell(TrieFile),
print_nested_ptree(Trie),
flush_output,
told,
tell(user_output)
;
true
),
nb_getval(problog_completed_proofs, Trie_Completed_Proofs),
((Trie = Trie_Completed_Proofs, problog_flag(save_bdd, true)) ->
problog_control(on, remember)
;
problog_control(off, remember)
),
% old reduction method doesn't support nested tries
((problog_flag(use_old_trie, true), nb_getval(problog_nested_tries, false)) ->
statistics(walltime, _),
(problog_control(check, remember) ->
bdd_struct_ptree_map(Trie, BDDFile, Variables, Mapping),
convert_filename_to_working_path(save_map, MapFile),
tell(MapFile),
format('mapping(~q).~n', [Mapping]),
flush_output,
told
;
bdd_struct_ptree(Trie, BDDFile, Variables)
),
statistics(walltime, [_, ScriptGenerationTime]),
problog_var_set(bdd_script_time, ScriptGenerationTime)
% omitted call to execute_bdd_tool
;
true
),
% naive method with nested trie support but not loops
((problog_flag(use_naive_trie, true); (problog_flag(use_old_trie, true), nb_getval(problog_nested_tries, true))) ->
statistics(walltime, _),
atomic_concat([BDDFile, '_naive'], BDDFile_naive),
nested_ptree_to_BDD_struct_script(Trie, BDDFile_naive, Variables),
statistics(walltime, [_, ScriptGenerationTime_naive]),
problog_var_set(bdd_script_time(naive), ScriptGenerationTime_naive)
% omitted call to execute_bdd_tool
;
true
),
% reduction method with depth_breadth trie support
problog_flag(db_trie_opt_lvl, ROptLevel),
problog_flag(db_min_prefix, MinPrefix),
(problog_flag(compare_opt_lvl, true) ->
generate_ints(0, ROptLevel, Levels)
;
Levels = [ROptLevel]
),
% Removed forall here, because it hides 'Variables' from what comes afterwards
memberchk(OptLevel, Levels),
(
(problog_flag(use_db_trie, true) ->
tries:trie_db_opt_min_prefix(MinPrefix),
statistics(walltime, _),
(nb_getval(problog_nested_tries, false) ->
trie_to_bdd_struct_trie(Trie, DBTrie, BDDFile, OptLevel, Variables)
;
nested_trie_to_bdd_struct_trie(Trie, DBTrie, BDDFile, OptLevel, Variables)
),
atomic_concat(['builtin_', OptLevel], Builtin),
ptree:trie_stats(DBMemory, DBTries, DBEntries, DBNodes),
FM is DBMemory - Memory,
FT is DBTries - Tries,
FE is DBEntries - Entries,
FN is DBNodes - Nodes,
problog_var_set(dbtrie_statistics(Builtin), tries(memory(FM), tries(FT), entries(FE), nodes(FN))),
delete_ptree(DBTrie),
statistics(walltime, [_, ScriptGenerationTime_builtin]),
problog_var_set(bdd_script_time(Builtin), ScriptGenerationTime_builtin)
% omitted call to execute_bdd_tool
;
true
)
),
% decomposition method
(problog_flag(use_dec_trie, true) ->
atomic_concat([BDDFile, '_dec'], BDDFile_dec),
timer_start(script_gen_time_dec),
ptree_decomposition_struct(Trie, BDDFile_dec, Variables),
timer_stop(script_gen_time_dec,Script_Gen_Time_Dec),
problog_var_set(bdd_script_time(dec), Script_Gen_Time_Dec)
% omitted call to execute_bdd_tool
;
true
),
(Trie =\= OriTrie ->
delete_ptree(Trie)
;
true
),
(var(Variables) -> throw(error('novars')) ; true).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Building a forest of BDDs
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
problog_bdd_forest(Goals) :-
(problog_bdd_forest_supported ->
require(keep_ground_ids),
once(write_bdd_forest(Goals,[],Vars,1)),
unrequire(keep_ground_ids),
reset_non_ground_facts,
bdd_par_file(BDDParFile),
% format('Vars: ~w~n',[Vars]),
tell(BDDParFile),
bdd_vars_script(Vars),
flush_output, % isnt this called by told/0?
told,
% false,
length(Goals,L),
length(Vars,NbVars),
write_global_bdd_file(NbVars,L),
(problog_flag(retain_tables, true) -> retain_tabling; true),
clear_tabling
;
throw(error('Flag settings not supported by problog_bdd_forest/1.'))
).
problog_bdd_forest_supported :- build_trie_supported.
% Iterate over all Goals, write BDD scripts and collect variables used.
write_bdd_forest([],AtomsTot,AtomsTot,_).
write_bdd_forest([Goal|Rest],AtomsAcc,AtomsTot,N) :-
build_trie(Goal, Trie),
write_nth_bdd_struct_script(N, Trie, Vars),
(problog_flag(verbose, true)->
problog_statistics
;
true
),
delete_ptree(Trie),
N2 is N+1,
% map 'not id' to id in Vars
findall(ID,(member((not ID),Vars)) ,NegativeAtoms),
findall(ID,(member(ID,Vars),ID \= (not _)),PositiveAtoms),
% format('PositiveAtoms: ~w~n',[PositiveAtoms]),
% format('NegativeAtoms: ~w~n',[NegativeAtoms]),
append(PositiveAtoms,NegativeAtoms,Atoms),
list_to_ord_set(Atoms,AtomsSet),
ord_union(AtomsAcc,AtomsSet,AtomsAcc2),
once(write_bdd_forest(Rest,AtomsAcc2,AtomsTot,N2)).
% Write files
write_nth_bdd_struct_script(N,Trie,Vars) :-
bdd_forest_file(N,BDDFile),
write_bdd_struct_script(Trie,BDDFile,Vars).
write_global_bdd_file(NbVars,L) :-
bdd_file(BDDFile),
open(BDDFile,'write',BDDFileStream),
format(BDDFileStream,'@BDD2~n~w~n~w~n~w~n',[NbVars,0,L]),
write_global_bdd_file_line(1,L,BDDFileStream),
write_global_bdd_file_query(1,L,BDDFileStream),
close(BDDFileStream).
write_global_bdd_file_line(I,Max,_Handle) :-
I>Max,
!.
write_global_bdd_file_line(I,Max,Handle) :-
bdd_forest_file(I,BDDFile),
format(Handle,'L~q = <~w>~n',[I,BDDFile]),
I2 is I+1,
write_global_bdd_file_line(I2,Max,Handle).
write_global_bdd_file_query(Max,Max,Handle) :-
!,
format(Handle,'L~q~n',[Max]).
write_global_bdd_file_query(I,Max,Handle) :-
format(Handle,'L~q,',[I]),
I2 is I+1,
write_global_bdd_file_query(I2,Max,Handle).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Filename specifications
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
bdd_forest_file(N,BDDFile) :-
problog_flag(bdd_file,BDDFileFlag),
atomic_concat([BDDFileFlag,'_',N],BDDFileFlagWithN),
convert_filename_to_working_path(BDDFileFlagWithN, BDDFile).
bdd_files(BDDFile,BDDParFile) :-
bdd_file(BDDFile),
bdd_par_file(BDDParFile).
bdd_file(BDDFile) :-
problog_flag(bdd_file, BDDFileFlag),
convert_filename_to_working_path(BDDFileFlag, BDDFile).
bdd_par_file(BDDParFile) :-
problog_flag(bdd_par_file, BDDParFileFlag),
convert_filename_to_working_path(BDDParFileFlag, BDDParFile).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Persistent Ground IDs
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
require(Feature) :-
atom(Feature),
atomic_concat(['problog_required_',Feature],Feature_Required),
atomic_concat([Feature_Required,'_',depth],Feature_Depth),
(required(Feature) ->
b_getval(Feature_Depth,Depth),
Depth1 is Depth+1,
b_setval(Feature_Depth,Depth1)
;
b_setval(Feature_Required,required),
b_setval(Feature_Depth,1)
%,format("starting to require ~q~n",[Feature])
).
unrequire(Feature) :-
atom(Feature),
atomic_concat(['problog_required_',Feature],Feature_Required),
atomic_concat([Feature_Required,'_',depth],Feature_Depth),
b_getval(Feature_Depth,Depth),
(Depth=1 ->
nb_delete(Feature_Required),
nb_delete(Feature_Depth)
%,format("stopped keeping ground id's~n",[])
;
Depth1 is Depth-1,
b_setval(Feature_Depth,Depth1)
).
required(Feature) :-
atom(Feature),
atomic_concat(['problog_required_',Feature],Feature_Required),
catch(b_getval(Feature_Required,Val),error(existence_error(variable,Feature_Required),_),fail),
Val == required.
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
format_if_verbose(H,T,L) :-
problog_flag(verbose,true),
!,
format(H,T,L).
format_if_verbose(_,_,_).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Should go to dtproblog.yap
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
signal_decision(ClauseID,GroundID) :-
(decision_fact(ClauseID,_) ->
bb_get(decisions,S),
ord_insert(S, GroundID, S2),
bb_put(decisions,S2)
;
true
).
%
% ProbLog in-memory inference
%
:- include(problog_lbdd).
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Term Expansion for user predicates
% Must come after clauses for '::'/2 and term_expansion_intern/3
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
user:term_expansion(Term,ExpandedTerm) :-
Term \== end_of_file,
prolog_load_context(module,Mod),
problog:term_expansion_intern(Term,Mod,ExpandedTerm).
%% @}