A curvilinear method based on minimal-memory BFGS updates

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摘要

We present a new matrix-free method for the computation of negative curvature directions based on the eigenstructure of minimal-memory BFGS matrices. We determine via simple formulas the eigenvalues of these matrices and we compute the desirable eigenvectors by explicit forms. Consequently, a negative curvature direction is computed in such a way that avoids the storage and the factorization of any matrix. We propose a modification of the L-BFGS method in which no information is kept from old iterations, so that memory requirements are minimal. The proposed algorithm incorporates a curvilinear path and a linesearch procedure, which combines two search directions; a memoryless quasi-Newton direction and a direction of negative curvature. Results of numerical experiments for large scale problems are also presented.

论文关键词:Large scale unconstrained optimization,Curvilinear search,Negative curvature direction,Eigenvalues,L-BFGS method

论文评审过程:Available online 20 June 2010.

论文官网地址:https://doi.org/10.1016/j.amc.2010.06.032