123 lines
4.2 KiB
Plaintext
123 lines
4.2 KiB
Plaintext
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%%%%
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%%%% Bayesian networks (1) -- alarm.psm
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%%%%
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%%%% Copyright (C) 2004,2006,2008
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%%%% Sato Laboratory, Dept. of Computer Science,
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%%%% Tokyo Institute of Technology
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%% This example is borrowed from:
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%% Poole, D., Probabilistic Horn abduction and Bayesian networks,
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%% In Proc. of Artificial Intelligence 64, pp.81-129, 1993.
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%%
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%% (Fire) (Tampering)
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%% / \ /
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%% ((Smoke)) (Alarm)
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%% |
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%% (Leaving) (( )) -- observable node
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%% | ( ) -- hidden node
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%% ((Report))
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%%
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%% In this network, we assume that all rvs (random variables)
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%% take on {yes,no} and also assume that only two nodes, `Smoke'
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%% and `Report', are observable.
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%%-------------------------------------
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%% Quick start : sample session
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%%
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%% ?- prism(alarm),go. % Learn parameters from randomly generated
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%% % 100 samples
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%%
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%% Get the probability and the explanation graph:
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%% ?- prob(world(yes,no)).
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%% ?- probf(world(yes,no)).
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%%
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%% Get the most likely explanation and its probability:
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%% ?- viterbif(world(yes,no)).
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%% ?- viterbi(world(yes,no)).
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%%
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%% Compute conditional hindsight probabilities:
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%% ?- chindsight(world(yes,no)).
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%% ?- chindsight_agg(world(yes,no),world(_,_,query,yes,_,no)).
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go:- alarm_learn(100).
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%%-------------------------------------
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%% Declarations:
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:- set_prism_flag(data_source,file('world.dat')).
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% When we run learn/0, the data are supplied
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% from `world.dat'.
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values(_,[yes,no]). % We declare multiary random switch msw(.,V)
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% used in this program such that V (outcome)
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% is one of {yes,no}. Note that '_' is
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% an anonymous logical variable in Prolog.
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% The distribution of V is specified by
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% set_params below.
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%%------------------------------------
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%% Modeling part:
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%%
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%% The above BN defines a joint distribution
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%% P(Fire,Tapering,Smoke,Alarm,Leaving,Report).
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%% We assume `Smoke' and `Report' are observable while others are not.
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%% Our modeling simulates random sampling of the BN from top nodes
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%% using msws. For each rv, say `Fire', we introduce a corresponding
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%% msw, say msw(fi,Fi) such that
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%% msw(fi,Fi) <=> sampling msw named fi yields the outcome Fi.
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%% Here fi is a constant intended for the name of rv `Fire.'
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%%
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world(Fi,Ta,Al,Sm,Le,Re) :-
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%% Define a distribution for world/5 such that e.g.
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%% P(Fire=yes,Tapering=yes,Smoke=no,Alarm=no,Leaving=no,Report=no)
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%% = P(world(yes,yes,no,no,no,no))
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msw(fi,Fi), % P(Fire)
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msw(ta,Ta), % P(Tampering)
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msw(sm(Fi),Sm), % CPT P(Smoke | Fire)
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msw(al(Fi,Ta),Al), % CPT P(Alarm | Fire,Tampering)
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msw(le(Al),Le), % CPT P(Leaving | Alarm)
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msw(re(Le),Re). % CPT P(Report | Leaving)
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world(Sm,Re):-
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%% Define marginal distribution for `Smoke' and `Report'
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world(_,_,_,Sm,_,Re).
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%%------------------------------------
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%% Utility part:
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alarm_learn(N) :-
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unfix_sw(_), % Make all parameters changeable
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set_params, % Set parameters as you specified
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get_samples(N,world(_,_),Gs), % Get N samples
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fix_sw(fi), % Preserve the parameter values
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learn(Gs). % for {msw(fi,yes), msw(fi,no)}
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% alarm_learn(N) :-
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% %% generate teacher data and write them to `world.dat'
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% %% before learn/0 is called.
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% write_world(N,'world.dat'),
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% learn.
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set_params :-
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set_sw(fi,[0.1,0.9]),
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set_sw(ta,[0.15,0.85]),
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set_sw(sm(yes),[0.95,0.05]),
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set_sw(sm(no),[0.05,0.95]),
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set_sw(al(yes,yes),[0.50,0.50]),
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set_sw(al(yes,no),[0.90,0.10]),
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set_sw(al(no,yes),[0.85,0.15]),
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set_sw(al(no,no),[0.05,0.95]),
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set_sw(le(yes),[0.88,0.12]),
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set_sw(le(no),[0.01,0.99]),
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set_sw(re(yes),[0.75,0.25]),
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set_sw(re(no),[0.10,0.90]).
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write_world(N,File) :-
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get_samples(N,world(_,_),Gs),tell(File),write_world(Gs),told.
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write_world([world(Sm,Re)|Gs]) :-
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write(world(Sm,Re)),write('.'),nl,write_world(Gs).
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write_world([]).
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