Lipschitz gradients for global optimization in a one-point-based partitioning scheme

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摘要

A global optimization problem is studied where the objective function f(x) is a multidimensional black-box function and its gradient f′(x) satisfies the Lipschitz condition over a hyperinterval with an unknown Lipschitz constant K. Different methods for solving this problem by using an a priori given estimate of K, its adaptive estimates, and adaptive estimates of local Lipschitz constants are known in the literature. Recently, the authors have proposed a one-dimensional algorithm working with multiple estimates of the Lipschitz constant for f′(x) (the existence of such an algorithm was a challenge for 15 years). In this paper, a new multidimensional geometric method evolving the ideas of this one-dimensional scheme and using an efficient one-point-based partitioning strategy is proposed. Numerical experiments executed on 800 multidimensional test functions demonstrate quite a promising performance in comparison with popular DIRECT-based methods.

论文关键词:65K05,90C26,90C56,Global optimization,Lipschitz gradients,Set of Lipschitz constants,Geometric algorithms

论文评审过程:Received 31 December 2011, Revised 10 February 2012, Available online 18 February 2012.

论文官网地址:https://doi.org/10.1016/j.cam.2012.02.020