arXiv Analytics

Sign in

arXiv:2310.07226 [math.OC]AbstractReferencesReviewsResources

A Quasi Newton Method for Uncertain Multiobjective Optimization Problems via Robust Optimization Approach

Shubham kumar, Nihar Kumar Mahato, Md Abu T Ansary, Debdas Ghosh

Published 2023-10-11Version 1

In this paper, we propose a quasi Newton method to solve the robust counterpart of an uncertain multiobjective optimization problem under an arbitrary finite uncertainty set. Here the robust counterpart of an uncertain multiobjective optimization problem is the minimum of objective-wise worst case, which is a nonsmooth deterministic multiobjective optimization problem. In order to solve this robust counterpart with the help of quasi Newton method, we construct a sub-problem using Hessian approximation and solve it to determine a descent direction for the robust counterpart. We introduce an Armijo-type inexact line search technique to find an appropriate step length, and develop a modified BFGS formula to ensure positive definiteness of the Hessian matrix at each iteration. By incorporating descent direction, step length size, and modified BFGS formula, we write the quasi Newton's descent algorithm for the robust counterpart. We prove the convergence of the algorithm under standard assumptions and demonstrate that it achieves superlinear convergence rate. Furthermore, we validate the algorithm by comparing it with the weighted sum method through some numerical examples by using a performance profile.

Related articles: Most relevant | Search more
arXiv:1501.02656 [math.OC] (Published 2015-01-12)
Robust counterparts of inequalities containing sums of maxima of linear functions
arXiv:2410.21140 [math.OC] (Published 2024-10-28)
A robust optimization approach to flow decomposition
arXiv:1101.3663 [math.OC] (Published 2011-01-19, updated 2012-02-01)
A robust optimization approach to experimental design for model discrimination of dynamical systems