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Hauptverfasser: Sinha, Ankur, Pujara, Dhaval, Singh, Hemant Kumar
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2407.03454
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author Sinha, Ankur
Pujara, Dhaval
Singh, Hemant Kumar
author_facet Sinha, Ankur
Pujara, Dhaval
Singh, Hemant Kumar
contents Practical optimization problems may contain different kinds of difficulties that are often not tractable if one relies on a particular optimization method. Different optimization approaches offer different strengths that are good at tackling one or more difficulty in an optimization problem. For instance, evolutionary algorithms have a niche in handling complexities like discontinuity, non-differentiability, discreteness and non-convexity. However, evolutionary algorithms may get computationally expensive for mathematically well behaved problems with large number of variables for which classical mathematical programming approaches are better suited. In this paper, we demonstrate a decomposition strategy that allows us to synergistically apply two complementary approaches at the same time on a complex optimization problem. Evolutionary algorithms are useful in this context as their flexibility makes pairing with other solution approaches easy. The decomposition idea is a special case of bilevel optimization that separates the difficulties into two levels and assigns different approaches at each level that is better equipped at handling them. We demonstrate the benefits of the proposed decomposition idea on a wide range of test problems.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03454
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Decomposition of Difficulties in Complex Optimization Problems Using a Bilevel Approach
Sinha, Ankur
Pujara, Dhaval
Singh, Hemant Kumar
Neural and Evolutionary Computing
Optimization and Control
90C30
G.0
Practical optimization problems may contain different kinds of difficulties that are often not tractable if one relies on a particular optimization method. Different optimization approaches offer different strengths that are good at tackling one or more difficulty in an optimization problem. For instance, evolutionary algorithms have a niche in handling complexities like discontinuity, non-differentiability, discreteness and non-convexity. However, evolutionary algorithms may get computationally expensive for mathematically well behaved problems with large number of variables for which classical mathematical programming approaches are better suited. In this paper, we demonstrate a decomposition strategy that allows us to synergistically apply two complementary approaches at the same time on a complex optimization problem. Evolutionary algorithms are useful in this context as their flexibility makes pairing with other solution approaches easy. The decomposition idea is a special case of bilevel optimization that separates the difficulties into two levels and assigns different approaches at each level that is better equipped at handling them. We demonstrate the benefits of the proposed decomposition idea on a wide range of test problems.
title Decomposition of Difficulties in Complex Optimization Problems Using a Bilevel Approach
topic Neural and Evolutionary Computing
Optimization and Control
90C30
G.0
url https://arxiv.org/abs/2407.03454