A steepest descent method for vector optimization
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摘要
In this work we propose a Cauchy-like method for solving smooth unconstrained vector optimization problems. When the partial order under consideration is the one induced by the nonnegative orthant, we regain the steepest descent method for multicriteria optimization recently proposed by Fliege and Svaiter. We prove that every accumulation point of the generated sequence satisfies a certain first-order necessary condition for optimality, which extends to the vector case the well known “gradient equal zero” condition for real-valued minimization. Finally, under some reasonable additional hypotheses, we prove (global) convergence to a weak unconstrained minimizer.As a by-product, we show that the problem of finding a weak constrained minimizer can be viewed as a particular case of the so-called Abstract Equilibrium problem.
论文关键词:Pareto optimality,Vector optimization,Steepest descent,K-convexity,Quasi-Féjer convergence
论文评审过程:Received 24 March 2003, Revised 3 June 2004, Available online 23 August 2004.
论文官网地址:https://doi.org/10.1016/j.cam.2004.06.018