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Optimization
A Journal of Mathematical Programming and Operations Research
Volume 67, 2018 - Issue 1
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Original Articles

Multiple subgradient descent bundle method for convex nonsmooth multiobjective optimization

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Pages 139-158 | Received 02 Feb 2017, Accepted 16 Sep 2017, Published online: 12 Oct 2017
 

Abstract

The aim of this paper is to propose a new multiple subgradient descent bundle method for solving unconstrained convex nonsmooth multiobjective optimization problems. Contrary to many existing multiobjective optimization methods, our method treats the objective functions as they are without employing a scalarization in a classical sense. The main idea of this method is to find descent directions for every objective function separately by utilizing the proximal bundle approach, and then trying to form a common descent direction for every objective function. In addition, we prove that the method is convergent and it finds weakly Pareto optimal solutions. Finally, some numerical experiments are considered.

Notes

No potential conflict of interest was reported by the authors.

Additional information

Funding

The research has been financially supported by the Finnish Academy of Science and Letters (the Vilho, Yrjö and Kalle Väisälä Foundation), Emil Aaltonen Foundation, University of Turku Graduate School UTUGS Matti programme, Academy of Finland [project number 289500] and University of Turku.

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