A conjugate directions approach to improve the limited-memory BFGS method

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摘要

Simple modifications of the limited-memory BFGS method (L-BFGS) for large scale unconstrained optimization are considered, which consist in corrections (derived from the idea of conjugate directions) of the used difference vectors, utilizing information from the preceding iteration. For quadratic objective functions, the improvement of convergence is the best one in some sense and all stored difference vectors are conjugate for unit stepsizes. Global convergence of the algorithm is established for convex sufficiently smooth functions. Numerical experiments indicate that the new method often improves the L-BFGS method significantly.

论文关键词:Unconstrained minimization,Variable metric methods,Limited-memory methods,The BFGS update,Conjugate directions,Numerical results

论文评审过程:Available online 27 July 2012.

论文官网地址:https://doi.org/10.1016/j.amc.2012.06.042