Quasi-Newton Method for Set Optimization Problems with Set-Valued Mapping Given by Finitely Many Vector-Valued Functions
Debdas Ghosh, Anshika, Jen-Chih Yao, Xiaopeng Zhao

TL;DR
This paper introduces a quasi-Newton method tailored for unconstrained set optimization problems with set-valued objectives defined by finitely many smooth vector functions, providing convergence analysis and superlinear convergence results.
Contribution
It develops a novel quasi-Newton algorithm for set optimization with finite vector-valued functions, including convergence proofs and superlinear convergence under certain conditions.
Findings
Algorithm converges to weakly minimal solutions.
Method exhibits local superlinear convergence.
Convergence proven under regularity and Armijo conditions.
Abstract
In this article, we propose a quasi-Newton method for unconstrained set optimization problems to find its weakly minimal solutions with respect to lower set-less ordering. The set-valued objective mapping under consideration is given by a finite number of vector-valued functions that are twice continuously differentiable. To find the necessary optimality condition for weak minimal points with the help of the proposed quasi-Newton method, we use the concept of partition and formulate a family of vector optimization problems. The evaluation of necessary optimality condition for finding the weakly minimal points involves the computation of the approximate Hessian of every objective function, which is done by a quasi-Newton scheme for vector optimization problems. In the proposed quasi-Newton method, we derive a sequence of iterative points that exhibits convergence to a point which…
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Taxonomy
TopicsAdvanced Optimization Algorithms Research · Optimization and Variational Analysis · Iterative Methods for Nonlinear Equations
