A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems

This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combinatorial optimization problems. Parameter tuning of heuristics makes them difficult to apply, as parameter tuning itself is an optimization problem. For this purpose, a modified local search algorithm...

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Main Authors: Cigdem Alabas-Uslu, Berna Dengiz
Format: Article
Language:English
Published: Atlantis Press 2014-09-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25868534.pdf
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spelling doaj-e1ceeef8a95b40eaa2ce30cf52c54aa72020-11-25T01:49:25ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832014-09-017510.1080/18756891.2014.966992A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization ProblemsCigdem Alabas-UsluBerna DengizThis paper introduces a new self-tuning mechanism to the local search heuristic for solving of combinatorial optimization problems. Parameter tuning of heuristics makes them difficult to apply, as parameter tuning itself is an optimization problem. For this purpose, a modified local search algorithm free from parameter tuning, called Self-Adaptive Local Search (SALS), is proposed for obtaining qualified solutions to combinatorial problems within reasonable amount of computer times. SALS is applied to several combinatorial optimization problems, namely, classical vehicle routing, permutation flow-shop scheduling, quadratic assignment, and topological design of networks. It is observed that self-adaptive structure of SALS provides implementation simplicity and flexibility to the considered combinatorial optimization problems. Detailed computational studies confirm the performance of SALS on the suit of test problems for each considered problem type especially in terms of solution quality.https://www.atlantis-press.com/article/25868534.pdfMetaheuristicsCombinatorial optimizationParameter tuningAdaptive parameter
collection DOAJ
language English
format Article
sources DOAJ
author Cigdem Alabas-Uslu
Berna Dengiz
spellingShingle Cigdem Alabas-Uslu
Berna Dengiz
A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems
International Journal of Computational Intelligence Systems
Metaheuristics
Combinatorial optimization
Parameter tuning
Adaptive parameter
author_facet Cigdem Alabas-Uslu
Berna Dengiz
author_sort Cigdem Alabas-Uslu
title A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems
title_short A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems
title_full A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems
title_fullStr A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems
title_full_unstemmed A Self-Adaptive Heuristic Algorithm for Combinatorial Optimization Problems
title_sort self-adaptive heuristic algorithm for combinatorial optimization problems
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2014-09-01
description This paper introduces a new self-tuning mechanism to the local search heuristic for solving of combinatorial optimization problems. Parameter tuning of heuristics makes them difficult to apply, as parameter tuning itself is an optimization problem. For this purpose, a modified local search algorithm free from parameter tuning, called Self-Adaptive Local Search (SALS), is proposed for obtaining qualified solutions to combinatorial problems within reasonable amount of computer times. SALS is applied to several combinatorial optimization problems, namely, classical vehicle routing, permutation flow-shop scheduling, quadratic assignment, and topological design of networks. It is observed that self-adaptive structure of SALS provides implementation simplicity and flexibility to the considered combinatorial optimization problems. Detailed computational studies confirm the performance of SALS on the suit of test problems for each considered problem type especially in terms of solution quality.
topic Metaheuristics
Combinatorial optimization
Parameter tuning
Adaptive parameter
url https://www.atlantis-press.com/article/25868534.pdf
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