The Proximal Point Method for Locally Lipschitz Functions in Multiobjective Optimization with Application to the Compromise Problem
Author(s) -
G. C. Bento,
J. X. Cruz Neto,
Genaro López-Acedo,
Antoine Soubeyran,
João Carlos O. Souza
Publication year - 2018
Publication title -
siam journal on optimization
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.066
H-Index - 136
eISSN - 1095-7189
pISSN - 1052-6234
DOI - 10.1137/16m107534x
Subject(s) - mathematics , lipschitz continuity , mathematical optimization , convexity , pareto principle , multi objective optimization , constraint (computer aided design) , convergence (economics) , optimization problem , point (geometry) , mathematical analysis , geometry , financial economics , economics , economic growth
This paper studies the constrained multiobjective optimization problem of finding Pareto critical points of vector-valued functions. The proximal point method considered by Bonnel, Iusem, and Svaiter [SIAM J. Optim., 15 (2005), pp. 953--970] is extended to locally Lipschitz functions in the finite dimensional multiobjective setting. To this end, a new (scalarization-free) approach for convergence analysis of the method is proposed where the first-order optimality condition of the scalarized problem is replaced by a necessary condition for weak Pareto points of a multiobjective problem. As a consequence, this has allowed us to consider the method without any assumption of convexity over the constraint sets that determine the vectorial improvement steps. This is very important for applications; for example, to extend to a dynamic setting the famous compromise problem in management sciences and game theory.
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