Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics

Nowadays, solving optimally combinatorial problems is an open problem. Determining the best arrangement of elements proves being a very complex task that becomes critical when the problem size increases. Researchers have proposed various algorithms for solving Combinatorial Optimization Problems (CO...

Full description

Bibliographic Details
Main Authors: Oscar Montiel, Francisco Javier Díaz Delgadillo
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2015/713043
id doaj-bd1b493b4be749a69949371fb3bf7b14
record_format Article
spelling doaj-bd1b493b4be749a69949371fb3bf7b142020-11-24T23:08:41ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472015-01-01201510.1155/2015/713043713043Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive HeuristicsOscar Montiel0Francisco Javier Díaz Delgadillo1Instituto Politécnico Nacional-CITEDI, Avenue del Parque No. 1310, Mesa de Otay, 22510 Tijuana, BCN, MexicoInstituto Politécnico Nacional-CITEDI, Avenue del Parque No. 1310, Mesa de Otay, 22510 Tijuana, BCN, MexicoNowadays, solving optimally combinatorial problems is an open problem. Determining the best arrangement of elements proves being a very complex task that becomes critical when the problem size increases. Researchers have proposed various algorithms for solving Combinatorial Optimization Problems (COPs) that take into account the scalability; however, issues are still presented with larger COPs concerning hardware limitations such as memory and CPU speed. It has been shown that the Reduce-Optimize-Expand (ROE) method can solve COPs faster with the same resources; in this methodology, the reduction step is the most important procedure since inappropriate reductions, applied to the problem, will produce suboptimal results on the subsequent stages. In this work, an algorithm to improve the reduction step is proposed. It is based on a fuzzy inference system to classify portions of the problem and remove them, allowing COPs solving algorithms to utilize better the hardware resources by dealing with smaller problem sizes, and the use of metadata and adaptive heuristics. The Travelling Salesman Problem has been used as a case of study; instances that range from 343 to 3056 cities were used to prove that the fuzzy logic approach produces a higher percentage of successful reductions.http://dx.doi.org/10.1155/2015/713043
collection DOAJ
language English
format Article
sources DOAJ
author Oscar Montiel
Francisco Javier Díaz Delgadillo
spellingShingle Oscar Montiel
Francisco Javier Díaz Delgadillo
Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics
Mathematical Problems in Engineering
author_facet Oscar Montiel
Francisco Javier Díaz Delgadillo
author_sort Oscar Montiel
title Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics
title_short Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics
title_full Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics
title_fullStr Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics
title_full_unstemmed Reducing the Size of Combinatorial Optimization Problems Using the Operator Vaccine by Fuzzy Selector with Adaptive Heuristics
title_sort reducing the size of combinatorial optimization problems using the operator vaccine by fuzzy selector with adaptive heuristics
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2015-01-01
description Nowadays, solving optimally combinatorial problems is an open problem. Determining the best arrangement of elements proves being a very complex task that becomes critical when the problem size increases. Researchers have proposed various algorithms for solving Combinatorial Optimization Problems (COPs) that take into account the scalability; however, issues are still presented with larger COPs concerning hardware limitations such as memory and CPU speed. It has been shown that the Reduce-Optimize-Expand (ROE) method can solve COPs faster with the same resources; in this methodology, the reduction step is the most important procedure since inappropriate reductions, applied to the problem, will produce suboptimal results on the subsequent stages. In this work, an algorithm to improve the reduction step is proposed. It is based on a fuzzy inference system to classify portions of the problem and remove them, allowing COPs solving algorithms to utilize better the hardware resources by dealing with smaller problem sizes, and the use of metadata and adaptive heuristics. The Travelling Salesman Problem has been used as a case of study; instances that range from 343 to 3056 cities were used to prove that the fuzzy logic approach produces a higher percentage of successful reductions.
url http://dx.doi.org/10.1155/2015/713043
work_keys_str_mv AT oscarmontiel reducingthesizeofcombinatorialoptimizationproblemsusingtheoperatorvaccinebyfuzzyselectorwithadaptiveheuristics
AT franciscojavierdiazdelgadillo reducingthesizeofcombinatorialoptimizationproblemsusingtheoperatorvaccinebyfuzzyselectorwithadaptiveheuristics
_version_ 1725612947058720768