746 lines
32 KiB
C
746 lines
32 KiB
C
/*
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* C library of Limited memory BFGS (L-BFGS).
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*
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* Copyright (c) 1990, Jorge Nocedal
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* Copyright (c) 2007-2010 Naoaki Okazaki
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* All rights reserved.
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*
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* Permission is hereby granted, free of charge, to any person obtaining a copy
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* of this software and associated documentation files (the "Software"), to deal
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* in the Software without restriction, including without limitation the rights
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* to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
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* copies of the Software, and to permit persons to whom the Software is
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* furnished to do so, subject to the following conditions:
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*
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* The above copyright notice and this permission notice shall be included in
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* all copies or substantial portions of the Software.
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*
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* THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
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* IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
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* FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
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* AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
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* LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
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* OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN
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* THE SOFTWARE.
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*/
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/* $Id$ */
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#ifndef __LBFGS_H__
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#define __LBFGS_H__
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#ifdef __cplusplus
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extern "C" {
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#endif/*__cplusplus*/
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/*
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* The default precision of floating point values is 64bit (double).
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*/
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#ifndef LBFGS_FLOAT
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#define LBFGS_FLOAT 64
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#endif/*LBFGS_FLOAT*/
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/*
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* Activate optimization routines for IEEE754 floating point values.
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*/
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#ifndef LBFGS_IEEE_FLOAT
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#define LBFGS_IEEE_FLOAT 1
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#endif/*LBFGS_IEEE_FLOAT*/
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#if LBFGS_FLOAT == 32
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typedef float lbfgsfloatval_t;
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#elif LBFGS_FLOAT == 64
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typedef double lbfgsfloatval_t;
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#else
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#error "libLBFGS supports single (float; LBFGS_FLOAT = 32) or double (double; LBFGS_FLOAT=64) precision only."
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#endif
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/**
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* \addtogroup liblbfgs_api libLBFGS API
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* @{
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*
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* The libLBFGS API.
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*/
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/**
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* Return values of lbfgs().
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*
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* Roughly speaking, a negative value indicates an error.
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*/
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enum {
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/** L-BFGS reaches convergence. */
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LBFGS_SUCCESS = 0,
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LBFGS_CONVERGENCE = 0,
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LBFGS_STOP,
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/** The initial variables already minimize the objective function. */
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LBFGS_ALREADY_MINIMIZED,
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/** Unknown error. */
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LBFGSERR_UNKNOWNERROR = -1024,
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/** Logic error. */
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LBFGSERR_LOGICERROR,
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/** Insufficient memory. */
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LBFGSERR_OUTOFMEMORY,
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/** The minimization process has been canceled. */
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LBFGSERR_CANCELED,
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/** Invalid number of variables specified. */
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LBFGSERR_INVALID_N,
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/** Invalid number of variables (for SSE) specified. */
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LBFGSERR_INVALID_N_SSE,
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/** The array x must be aligned to 16 (for SSE). */
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LBFGSERR_INVALID_X_SSE,
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/** Invalid parameter lbfgs_parameter_t::epsilon specified. */
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LBFGSERR_INVALID_EPSILON,
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/** Invalid parameter lbfgs_parameter_t::past specified. */
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LBFGSERR_INVALID_TESTPERIOD,
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/** Invalid parameter lbfgs_parameter_t::delta specified. */
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LBFGSERR_INVALID_DELTA,
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/** Invalid parameter lbfgs_parameter_t::linesearch specified. */
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LBFGSERR_INVALID_LINESEARCH,
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/** Invalid parameter lbfgs_parameter_t::max_step specified. */
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LBFGSERR_INVALID_MINSTEP,
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/** Invalid parameter lbfgs_parameter_t::max_step specified. */
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LBFGSERR_INVALID_MAXSTEP,
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/** Invalid parameter lbfgs_parameter_t::ftol specified. */
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LBFGSERR_INVALID_FTOL,
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/** Invalid parameter lbfgs_parameter_t::wolfe specified. */
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LBFGSERR_INVALID_WOLFE,
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/** Invalid parameter lbfgs_parameter_t::gtol specified. */
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LBFGSERR_INVALID_GTOL,
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/** Invalid parameter lbfgs_parameter_t::xtol specified. */
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LBFGSERR_INVALID_XTOL,
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/** Invalid parameter lbfgs_parameter_t::max_linesearch specified. */
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LBFGSERR_INVALID_MAXLINESEARCH,
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/** Invalid parameter lbfgs_parameter_t::orthantwise_c specified. */
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LBFGSERR_INVALID_ORTHANTWISE,
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/** Invalid parameter lbfgs_parameter_t::orthantwise_start specified. */
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LBFGSERR_INVALID_ORTHANTWISE_START,
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/** Invalid parameter lbfgs_parameter_t::orthantwise_end specified. */
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LBFGSERR_INVALID_ORTHANTWISE_END,
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/** The line-search step went out of the interval of uncertainty. */
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LBFGSERR_OUTOFINTERVAL,
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/** A logic error occurred; alternatively, the interval of uncertainty
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became too small. */
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LBFGSERR_INCORRECT_TMINMAX,
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/** A rounding error occurred; alternatively, no line-search step
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satisfies the sufficient decrease and curvature conditions. */
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LBFGSERR_ROUNDING_ERROR,
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/** The line-search step became smaller than lbfgs_parameter_t::min_step. */
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LBFGSERR_MINIMUMSTEP,
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/** The line-search step became larger than lbfgs_parameter_t::max_step. */
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LBFGSERR_MAXIMUMSTEP,
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/** The line-search routine reaches the maximum number of evaluations. */
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LBFGSERR_MAXIMUMLINESEARCH,
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/** The algorithm routine reaches the maximum number of iterations. */
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LBFGSERR_MAXIMUMITERATION,
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/** Relative width of the interval of uncertainty is at most
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lbfgs_parameter_t::xtol. */
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LBFGSERR_WIDTHTOOSMALL,
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/** A logic error (negative line-search step) occurred. */
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LBFGSERR_INVALIDPARAMETERS,
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/** The current search direction increases the objective function value. */
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LBFGSERR_INCREASEGRADIENT,
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};
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/**
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* Line search algorithms.
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*/
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enum {
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/** The default algorithm (MoreThuente method). */
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LBFGS_LINESEARCH_DEFAULT = 0,
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/** MoreThuente method proposd by More and Thuente. */
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LBFGS_LINESEARCH_MORETHUENTE = 0,
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/**
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* Backtracking method with the Armijo condition.
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* The backtracking method finds the step length such that it satisfies
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* the sufficient decrease (Armijo) condition,
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* - f(x + a * d) <= f(x) + lbfgs_parameter_t::ftol * a * g(x)^T d,
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*
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* where x is the current point, d is the current search direction, and
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* a is the step length.
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*/
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LBFGS_LINESEARCH_BACKTRACKING_ARMIJO = 1,
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/** The backtracking method with the defualt (regular Wolfe) condition. */
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LBFGS_LINESEARCH_BACKTRACKING = 2,
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/**
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* Backtracking method with regular Wolfe condition.
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* The backtracking method finds the step length such that it satisfies
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* both the Armijo condition (LBFGS_LINESEARCH_BACKTRACKING_ARMIJO)
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* and the curvature condition,
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* - g(x + a * d)^T d >= lbfgs_parameter_t::wolfe * g(x)^T d,
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*
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* where x is the current point, d is the current search direction, and
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* a is the step length.
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*/
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LBFGS_LINESEARCH_BACKTRACKING_WOLFE = 2,
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/**
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* Backtracking method with strong Wolfe condition.
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* The backtracking method finds the step length such that it satisfies
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* both the Armijo condition (LBFGS_LINESEARCH_BACKTRACKING_ARMIJO)
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* and the following condition,
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* - |g(x + a * d)^T d| <= lbfgs_parameter_t::wolfe * |g(x)^T d|,
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*
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* where x is the current point, d is the current search direction, and
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* a is the step length.
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*/
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LBFGS_LINESEARCH_BACKTRACKING_STRONG_WOLFE = 3,
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};
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/**
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* L-BFGS optimization parameters.
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* Call lbfgs_parameter_init() function to initialize parameters to the
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* default values.
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*/
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typedef struct {
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/**
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* The number of corrections to approximate the inverse hessian matrix.
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* The L-BFGS routine stores the computation results of previous \ref m
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* iterations to approximate the inverse hessian matrix of the current
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* iteration. This parameter controls the size of the limited memories
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* (corrections). The default value is \c 6. Values less than \c 3 are
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* not recommended. Large values will result in excessive computing time.
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*/
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int m;
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/**
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* Epsilon for convergence test.
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* This parameter determines the accuracy with which the solution is to
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* be found. A minimization terminates when
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* ||g|| < \ref epsilon * max(1, ||x||),
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* where ||.|| denotes the Euclidean (L2) norm. The default value is
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* \c 1e-5.
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*/
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lbfgsfloatval_t epsilon;
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/**
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* Distance for delta-based convergence test.
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* This parameter determines the distance, in iterations, to compute
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* the rate of decrease of the objective function. If the value of this
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* parameter is zero, the library does not perform the delta-based
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* convergence test. The default value is \c 0.
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*/
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int past;
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/**
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* Delta for convergence test.
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* This parameter determines the minimum rate of decrease of the
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* objective function. The library stops iterations when the
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* following condition is met:
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* (f' - f) / f < \ref delta,
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* where f' is the objective value of \ref past iterations ago, and f is
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* the objective value of the current iteration.
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* The default value is \c 0.
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*/
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lbfgsfloatval_t delta;
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/**
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* The maximum number of iterations.
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* The lbfgs() function terminates an optimization process with
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* ::LBFGSERR_MAXIMUMITERATION status code when the iteration count
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* exceedes this parameter. Setting this parameter to zero continues an
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* optimization process until a convergence or error. The default value
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* is \c 0.
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*/
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int max_iterations;
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/**
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* The line search algorithm.
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* This parameter specifies a line search algorithm to be used by the
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* L-BFGS routine.
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*/
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int linesearch;
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/**
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* The maximum number of trials for the line search.
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* This parameter controls the number of function and gradients evaluations
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* per iteration for the line search routine. The default value is \c 20.
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*/
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int max_linesearch;
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/**
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* The minimum step of the line search routine.
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* The default value is \c 1e-20. This value need not be modified unless
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* the exponents are too large for the machine being used, or unless the
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* problem is extremely badly scaled (in which case the exponents should
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* be increased).
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*/
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lbfgsfloatval_t min_step;
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/**
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* The maximum step of the line search.
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* The default value is \c 1e+20. This value need not be modified unless
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* the exponents are too large for the machine being used, or unless the
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* problem is extremely badly scaled (in which case the exponents should
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* be increased).
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*/
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lbfgsfloatval_t max_step;
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/**
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* A parameter to control the accuracy of the line search routine.
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* The default value is \c 1e-4. This parameter should be greater
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* than zero and smaller than \c 0.5.
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*/
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lbfgsfloatval_t ftol;
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/**
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* A coefficient for the Wolfe condition.
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* This parameter is valid only when the backtracking line-search
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* algorithm is used with the Wolfe condition,
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* ::LBFGS_LINESEARCH_BACKTRACKING_STRONG_WOLFE or
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* ::LBFGS_LINESEARCH_BACKTRACKING_WOLFE .
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* The default value is \c 0.9. This parameter should be greater
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* the \ref ftol parameter and smaller than \c 1.0.
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*/
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lbfgsfloatval_t wolfe;
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/**
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* A parameter to control the accuracy of the line search routine.
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* The default value is \c 0.9. If the function and gradient
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* evaluations are inexpensive with respect to the cost of the
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* iteration (which is sometimes the case when solving very large
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* problems) it may be advantageous to set this parameter to a small
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* value. A typical small value is \c 0.1. This parameter shuold be
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* greater than the \ref ftol parameter (\c 1e-4) and smaller than
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* \c 1.0.
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*/
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lbfgsfloatval_t gtol;
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/**
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* The machine precision for floating-point values.
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* This parameter must be a positive value set by a client program to
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* estimate the machine precision. The line search routine will terminate
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* with the status code (::LBFGSERR_ROUNDING_ERROR) if the relative width
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* of the interval of uncertainty is less than this parameter.
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*/
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lbfgsfloatval_t xtol;
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/**
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* Coeefficient for the L1 norm of variables.
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* This parameter should be set to zero for standard minimization
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* problems. Setting this parameter to a positive value activates
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* Orthant-Wise Limited-memory Quasi-Newton (OWL-QN) method, which
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* minimizes the objective function F(x) combined with the L1 norm |x|
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* of the variables, {F(x) + C |x|}. This parameter is the coeefficient
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* for the |x|, i.e., C. As the L1 norm |x| is not differentiable at
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* zero, the library modifies function and gradient evaluations from
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* a client program suitably; a client program thus have only to return
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* the function value F(x) and gradients G(x) as usual. The default value
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* is zero.
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*/
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lbfgsfloatval_t orthantwise_c;
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/**
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* Start index for computing L1 norm of the variables.
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* This parameter is valid only for OWL-QN method
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* (i.e., \ref orthantwise_c != 0). This parameter b (0 <= b < N)
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* specifies the index number from which the library computes the
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* L1 norm of the variables x,
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* |x| := |x_{b}| + |x_{b+1}| + ... + |x_{N}| .
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* In other words, variables x_1, ..., x_{b-1} are not used for
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* computing the L1 norm. Setting b (0 < b < N), one can protect
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* variables, x_1, ..., x_{b-1} (e.g., a bias term of logistic
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* regression) from being regularized. The default value is zero.
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*/
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int orthantwise_start;
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/**
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* End index for computing L1 norm of the variables.
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* This parameter is valid only for OWL-QN method
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* (i.e., \ref orthantwise_c != 0). This parameter e (0 < e <= N)
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* specifies the index number at which the library stops computing the
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* L1 norm of the variables x,
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*/
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int orthantwise_end;
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} lbfgs_parameter_t;
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/**
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* Callback interface to provide objective function and gradient evaluations.
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*
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* The lbfgs() function call this function to obtain the values of objective
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* function and its gradients when needed. A client program must implement
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* this function to evaluate the values of the objective function and its
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* gradients, given current values of variables.
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*
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* @param instance The user data sent for lbfgs() function by the client.
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* @param x The current values of variables.
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* @param g The gradient vector. The callback function must compute
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* the gradient values for the current variables.
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* @param n The number of variables.
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* @param step The current step of the line search routine.
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* @retval lbfgsfloatval_t The value of the objective function for the current
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* variables.
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*/
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typedef lbfgsfloatval_t (*lbfgs_evaluate_t)(
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void *instance,
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const lbfgsfloatval_t *x,
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lbfgsfloatval_t *g,
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const int n,
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const lbfgsfloatval_t step
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);
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/**
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* Callback interface to receive the progress of the optimization process.
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*
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* The lbfgs() function call this function for each iteration. Implementing
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* this function, a client program can store or display the current progress
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* of the optimization process.
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*
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* @param instance The user data sent for lbfgs() function by the client.
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* @param x The current values of variables.
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* @param g The current gradient values of variables.
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* @param fx The current value of the objective function.
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* @param xnorm The Euclidean norm of the variables.
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* @param gnorm The Euclidean norm of the gradients.
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* @param step The line-search step used for this iteration.
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* @param n The number of variables.
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* @param k The iteration count.
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* @param ls The number of evaluations called for this iteration.
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* @retval int Zero to continue the optimization process. Returning a
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* non-zero value will cancel the optimization process.
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*/
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typedef int (*lbfgs_progress_t)(
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void *instance,
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const lbfgsfloatval_t *x,
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const lbfgsfloatval_t *g,
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const lbfgsfloatval_t fx,
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const lbfgsfloatval_t xnorm,
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const lbfgsfloatval_t gnorm,
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const lbfgsfloatval_t step,
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int n,
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int k,
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int ls
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);
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/*
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A user must implement a function compatible with ::lbfgs_evaluate_t (evaluation
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callback) and pass the pointer to the callback function to lbfgs() arguments.
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Similarly, a user can implement a function compatible with ::lbfgs_progress_t
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(progress callback) to obtain the current progress (e.g., variables, function
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value, ||G||, etc) and to cancel the iteration process if necessary.
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Implementation of a progress callback is optional: a user can pass \c NULL if
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progress notification is not necessary.
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In addition, a user must preserve two requirements:
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- The number of variables must be multiples of 16 (this is not 4).
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- The memory block of variable array ::x must be aligned to 16.
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This algorithm terminates an optimization
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when:
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||G|| < \epsilon \cdot \max(1, ||x||) .
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In this formula, ||.|| denotes the Euclidean norm.
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*/
|
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/**
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* Start a L-BFGS optimization.
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*
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* @param n The number of variables.
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* @param x The array of variables. A client program can set
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* default values for the optimization and receive the
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* optimization result through this array. This array
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* must be allocated by ::lbfgs_malloc function
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* for libLBFGS built with SSE/SSE2 optimization routine
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* enabled. The library built without SSE/SSE2
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* optimization does not have such a requirement.
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* @param ptr_fx The pointer to the variable that receives the final
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* value of the objective function for the variables.
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* This argument can be set to \c NULL if the final
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* value of the objective function is unnecessary.
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* @param proc_evaluate The callback function to provide function and
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* gradient evaluations given a current values of
|
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* variables. A client program must implement a
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* callback function compatible with \ref
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* lbfgs_evaluate_t and pass the pointer to the
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* callback function.
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* @param proc_progress The callback function to receive the progress
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* (the number of iterations, the current value of
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* the objective function) of the minimization
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* process. This argument can be set to \c NULL if
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* a progress report is unnecessary.
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* @param instance A user data for the client program. The callback
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* functions will receive the value of this argument.
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* @param param The pointer to a structure representing parameters for
|
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* L-BFGS optimization. A client program can set this
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* parameter to \c NULL to use the default parameters.
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* Call lbfgs_parameter_init() function to fill a
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* structure with the default values.
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|
* @retval int The status code. This function returns zero if the
|
|
* minimization process terminates without an error. A
|
|
* non-zero value indicates an error.
|
|
*/
|
|
int lbfgs(
|
|
int n,
|
|
lbfgsfloatval_t *x,
|
|
lbfgsfloatval_t *ptr_fx,
|
|
lbfgs_evaluate_t proc_evaluate,
|
|
lbfgs_progress_t proc_progress,
|
|
void *instance,
|
|
lbfgs_parameter_t *param
|
|
);
|
|
|
|
/**
|
|
* Initialize L-BFGS parameters to the default values.
|
|
*
|
|
* Call this function to fill a parameter structure with the default values
|
|
* and overwrite parameter values if necessary.
|
|
*
|
|
* @param param The pointer to the parameter structure.
|
|
*/
|
|
void lbfgs_parameter_init(lbfgs_parameter_t *param);
|
|
|
|
/**
|
|
* Allocate an array for variables.
|
|
*
|
|
* This function allocates an array of variables for the convenience of
|
|
* ::lbfgs function; the function has a requreiemt for a variable array
|
|
* when libLBFGS is built with SSE/SSE2 optimization routines. A user does
|
|
* not have to use this function for libLBFGS built without SSE/SSE2
|
|
* optimization.
|
|
*
|
|
* @param n The number of variables.
|
|
*/
|
|
lbfgsfloatval_t* lbfgs_malloc(int n);
|
|
|
|
/**
|
|
* Free an array of variables.
|
|
*
|
|
* @param x The array of variables allocated by ::lbfgs_malloc
|
|
* function.
|
|
*/
|
|
void lbfgs_free(lbfgsfloatval_t *x);
|
|
|
|
/** @} */
|
|
|
|
#ifdef __cplusplus
|
|
}
|
|
#endif/*__cplusplus*/
|
|
|
|
|
|
|
|
/**
|
|
@chapter libLBFGS: a library of Limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS)
|
|
|
|
@section intro Introduction
|
|
|
|
This library is a C port of the implementation of Limited-memory
|
|
Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) method written by Jorge Nocedal.
|
|
The original FORTRAN source code is available at:
|
|
http://www.ece.northwestern.edu/~nocedal/lbfgs.html
|
|
|
|
The L-BFGS method solves the unconstrainted minimization problem,
|
|
|
|
<pre>
|
|
minimize F(x), x = (x1, x2, ..., xN),
|
|
</pre>
|
|
|
|
only if the objective function F(x) and its gradient G(x) are computable. The
|
|
well-known Newton's method requires computation of the inverse of the hessian
|
|
matrix of the objective function. However, the computational cost for the
|
|
inverse hessian matrix is expensive especially when the objective function
|
|
takes a large number of variables. The L-BFGS method iteratively finds a
|
|
minimizer by approximating the inverse hessian matrix by information from last
|
|
m iterations. This innovation saves the memory storage and computational time
|
|
drastically for large-scaled problems.
|
|
|
|
Among the various ports of L-BFGS, this library provides several features:
|
|
- <b>Optimization with L1-norm (Orthant-Wise Limited-memory Quasi-Newton
|
|
(OWL-QN) method)</b>:
|
|
In addition to standard minimization problems, the library can minimize
|
|
a function F(x) combined with L1-norm |x| of the variables,
|
|
{F(x) + C |x|}, where C is a constant scalar parameter. This feature is
|
|
useful for estimating parameters of sparse log-linear models (e.g.,
|
|
logistic regression and maximum entropy) with L1-regularization (or
|
|
Laplacian prior).
|
|
- <b>Clean C code</b>:
|
|
Unlike C codes generated automatically by f2c (Fortran 77 into C converter),
|
|
this port includes changes based on my interpretations, improvements,
|
|
optimizations, and clean-ups so that the ported code would be well-suited
|
|
for a C code. In addition to comments inherited from the original code,
|
|
a number of comments were added through my interpretations.
|
|
- <b>Callback interface</b>:
|
|
The library receives function and gradient values via a callback interface.
|
|
The library also notifies the progress of the optimization by invoking a
|
|
callback function. In the original implementation, a user had to set
|
|
function and gradient values every time the function returns for obtaining
|
|
updated values.
|
|
- <b>Thread safe</b>:
|
|
The library is thread-safe, which is the secondary gain from the callback
|
|
interface.
|
|
- <b>Cross platform.</b> The source code can be compiled on Microsoft Visual
|
|
Studio 2010, GNU C Compiler (gcc), etc.
|
|
- <b>Configurable precision</b>: A user can choose single-precision (float)
|
|
or double-precision (double) accuracy by changing ::LBFGS_FLOAT macro.
|
|
- <b>SSE/SSE2 optimization</b>:
|
|
This library includes SSE/SSE2 optimization (written in compiler intrinsics)
|
|
for vector arithmetic operations on Intel/AMD processors. The library uses
|
|
SSE for float values and SSE2 for double values. The SSE/SSE2 optimization
|
|
routine is disabled by default.
|
|
|
|
This library is used by:
|
|
- <a href="http://www.chokkan.org/software/crfsuite/">CRFsuite: A fast implementation of Conditional Random Fields (CRFs)</a>
|
|
- <a href="http://www.chokkan.org/software/classias/">Classias: A collection of machine-learning algorithms for classification</a>
|
|
- <a href="http://www.public.iastate.edu/~gdancik/mlegp/">mlegp: an R package for maximum likelihood estimates for Gaussian processes</a>
|
|
- <a href="http://infmath.uibk.ac.at/~matthiasf/imaging2/">imaging2: the imaging2 class library</a>
|
|
- <a href="http://search.cpan.org/~laye/Algorithm-LBFGS-0.16/">Algorithm::LBFGS - Perl extension for L-BFGS</a>
|
|
- <a href="http://www.cs.kuleuven.be/~bernd/yap-lbfgs/">YAP-LBFGS (an interface to call libLBFGS from YAP Prolog)</a>
|
|
|
|
@section download Download
|
|
|
|
- <a href="https://github.com/downloads/chokkan/liblbfgs/liblbfgs-1.10.tar.gz">Source code</a>
|
|
- <a href="https://github.com/chokkan/liblbfgs">GitHub repository</a>
|
|
|
|
libLBFGS is distributed under the term of the
|
|
<a href="http://opensource.org/licenses/mit-license.php">MIT license</a>.
|
|
|
|
@section changelog History
|
|
- Version 1.10 (2010-12-22):
|
|
- Fixed compiling errors on Mac OS X; this patch was kindly submitted by
|
|
Nic Schraudolph.
|
|
- Reduced compiling warnings on Mac OS X; this patch was kindly submitted
|
|
by Tamas Nepusz.
|
|
- Replaced memalign() with posix_memalign().
|
|
- Updated solution and project files for Microsoft Visual Studio 2010.
|
|
- Version 1.9 (2010-01-29):
|
|
- Fixed a mistake in checking the validity of the parameters "ftol" and
|
|
"wolfe"; this was discovered by Kevin S. Van Horn.
|
|
- Version 1.8 (2009-07-13):
|
|
- Accepted the patch submitted by Takashi Imamichi;
|
|
the backtracking method now has three criteria for choosing the step
|
|
length:
|
|
- ::LBFGS_LINESEARCH_BACKTRACKING_ARMIJO: sufficient decrease (Armijo)
|
|
condition only
|
|
- ::LBFGS_LINESEARCH_BACKTRACKING_WOLFE: regular Wolfe condition
|
|
(sufficient decrease condition + curvature condition)
|
|
- ::LBFGS_LINESEARCH_BACKTRACKING_STRONG_WOLFE: strong Wolfe condition
|
|
- Updated the documentation to explain the above three criteria.
|
|
- Version 1.7 (2009-02-28):
|
|
- Improved OWL-QN routines for stability.
|
|
- Removed the support of OWL-QN method in MoreThuente algorithm because
|
|
it accidentally fails in early stages of iterations for some objectives.
|
|
Because of this change, <b>the OW-LQN method must be used with the
|
|
backtracking algorithm (::LBFGS_LINESEARCH_BACKTRACKING)</b>, or the
|
|
library returns ::LBFGSERR_INVALID_LINESEARCH.
|
|
- Renamed line search algorithms as follows:
|
|
- ::LBFGS_LINESEARCH_BACKTRACKING: regular Wolfe condition.
|
|
- ::LBFGS_LINESEARCH_BACKTRACKING_LOOSE: regular Wolfe condition.
|
|
- ::LBFGS_LINESEARCH_BACKTRACKING_STRONG: strong Wolfe condition.
|
|
- Source code clean-up.
|
|
- Version 1.6 (2008-11-02):
|
|
- Improved line-search algorithm with strong Wolfe condition, which was
|
|
contributed by Takashi Imamichi. This routine is now default for
|
|
::LBFGS_LINESEARCH_BACKTRACKING. The previous line search algorithm
|
|
with regular Wolfe condition is still available as
|
|
::LBFGS_LINESEARCH_BACKTRACKING_LOOSE.
|
|
- Configurable stop index for L1-norm computation. A member variable
|
|
::lbfgs_parameter_t::orthantwise_end was added to specify the index
|
|
number at which the library stops computing the L1 norm of the
|
|
variables. This is useful to prevent some variables from being
|
|
regularized by the OW-LQN method.
|
|
- A sample program written in C++ (sample/sample.cpp).
|
|
- Version 1.5 (2008-07-10):
|
|
- Configurable starting index for L1-norm computation. A member variable
|
|
::lbfgs_parameter_t::orthantwise_start was added to specify the index
|
|
number from which the library computes the L1 norm of the variables.
|
|
This is useful to prevent some variables from being regularized by the
|
|
OWL-QN method.
|
|
- Fixed a zero-division error when the initial variables have already
|
|
been a minimizer (reported by Takashi Imamichi). In this case, the
|
|
library returns ::LBFGS_ALREADY_MINIMIZED status code.
|
|
- Defined ::LBFGS_SUCCESS status code as zero; removed unused constants,
|
|
LBFGSFALSE and LBFGSTRUE.
|
|
- Fixed a compile error in an implicit down-cast.
|
|
- Version 1.4 (2008-04-25):
|
|
- Configurable line search algorithms. A member variable
|
|
::lbfgs_parameter_t::linesearch was added to choose either MoreThuente
|
|
method (::LBFGS_LINESEARCH_MORETHUENTE) or backtracking algorithm
|
|
(::LBFGS_LINESEARCH_BACKTRACKING).
|
|
- Fixed a bug: the previous version did not compute psuedo-gradients
|
|
properly in the line search routines for OWL-QN. This bug might quit
|
|
an iteration process too early when the OWL-QN routine was activated
|
|
(0 < ::lbfgs_parameter_t::orthantwise_c).
|
|
- Configure script for POSIX environments.
|
|
- SSE/SSE2 optimizations with GCC.
|
|
- New functions ::lbfgs_malloc and ::lbfgs_free to use SSE/SSE2 routines
|
|
transparently. It is uncessary to use these functions for libLBFGS built
|
|
without SSE/SSE2 routines; you can still use any memory allocators if
|
|
SSE/SSE2 routines are disabled in libLBFGS.
|
|
- Version 1.3 (2007-12-16):
|
|
- An API change. An argument was added to lbfgs() function to receive the
|
|
final value of the objective function. This argument can be set to
|
|
\c NULL if the final value is unnecessary.
|
|
- Fixed a null-pointer bug in the sample code (reported by Takashi Imamichi).
|
|
- Added build scripts for Microsoft Visual Studio 2005 and GCC.
|
|
- Added README file.
|
|
- Version 1.2 (2007-12-13):
|
|
- Fixed a serious bug in orthant-wise L-BFGS.
|
|
An important variable was used without initialization.
|
|
- Version 1.1 (2007-12-01):
|
|
- Implemented orthant-wise L-BFGS.
|
|
- Implemented lbfgs_parameter_init() function.
|
|
- Fixed several bugs.
|
|
- API documentation.
|
|
- Version 1.0 (2007-09-20):
|
|
- Initial release.
|
|
|
|
@section api Documentation
|
|
|
|
- @ref liblbfgs_api "libLBFGS API"
|
|
|
|
@section sample Sample code
|
|
|
|
@include sample.c
|
|
|
|
@section ack Acknowledgements
|
|
|
|
The L-BFGS algorithm is described in:
|
|
- Jorge Nocedal.
|
|
Updating Quasi-Newton Matrices with Limited Storage.
|
|
<i>Mathematics of Computation</i>, Vol. 35, No. 151, pp. 773--782, 1980.
|
|
- Dong C. Liu and Jorge Nocedal.
|
|
On the limited memory BFGS method for large scale optimization.
|
|
<i>Mathematical Programming</i> B, Vol. 45, No. 3, pp. 503-528, 1989.
|
|
|
|
The line search algorithms used in this implementation are described in:
|
|
- John E. Dennis and Robert B. Schnabel.
|
|
<i>Numerical Methods for Unconstrained Optimization and Nonlinear
|
|
Equations</i>, Englewood Cliffs, 1983.
|
|
- Jorge J. More and David J. Thuente.
|
|
Line search algorithm with guaranteed sufficient decrease.
|
|
<i>ACM Transactions on Mathematical Software (TOMS)</i>, Vol. 20, No. 3,
|
|
pp. 286-307, 1994.
|
|
|
|
This library also implements Orthant-Wise Limited-memory Quasi-Newton (OWL-QN)
|
|
method presented in:
|
|
- Galen Andrew and Jianfeng Gao.
|
|
Scalable training of L1-regularized log-linear models.
|
|
In <i>Proceedings of the 24th International Conference on Machine
|
|
Learning (ICML 2007)</i>, pp. 33-40, 2007.
|
|
|
|
Special thanks go to:
|
|
- Yoshimasa Tsuruoka and Daisuke Okanohara for technical information about
|
|
OWL-QN
|
|
- Takashi Imamichi for the useful enhancements of the backtracking method
|
|
- Kevin S. Van Horn, Nic Schraudolph, and Tamas Nepusz for bug fixes
|
|
|
|
Finally I would like to thank the original author, Jorge Nocedal, who has been
|
|
distributing the effieicnt and explanatory implementation in an open source
|
|
licence.
|
|
|
|
@section reference Reference
|
|
|
|
- <a href="http://www.ece.northwestern.edu/~nocedal/lbfgs.html">L-BFGS</a> by Jorge Nocedal.
|
|
- <a href="http://research.microsoft.com/en-us/downloads/b1eb1016-1738-4bd5-83a9-370c9d498a03/default.aspx">Orthant-Wise Limited-memory Quasi-Newton Optimizer for L1-regularized Objectives</a> by Galen Andrew.
|
|
- <a href="http://chasen.org/~taku/software/misc/lbfgs/">C port (via f2c)</a> by Taku Kudo.
|
|
- <a href="http://www.alglib.net/optimization/lbfgs.php">C#/C++/Delphi/VisualBasic6 port</a> in ALGLIB.
|
|
- <a href="http://cctbx.sourceforge.net/">Computational Crystallography Toolbox</a> includes
|
|
<a href="http://cctbx.sourceforge.net/current_cvs/c_plus_plus/namespacescitbx_1_1lbfgs.html">scitbx::lbfgs</a>.
|
|
*/
|
|
|
|
#endif/*__LBFGS_H__*/
|