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Negative Learning Ant Colony Optimization for MaxSAT

Authors :
Ministerio de Ciencia e Innovación (España)
Blum, Christian [0000-0002-1736-3559]
Manyà, Felip [0000-0002-8366-1458]
Teddy Nurcahyadi
Blum, Christian
Manyà, Felip
Ministerio de Ciencia e Innovación (España)
Blum, Christian [0000-0002-1736-3559]
Manyà, Felip [0000-0002-8366-1458]
Teddy Nurcahyadi
Blum, Christian
Manyà, Felip
Publication Year :
2022

Abstract

Recently, a new negative learning variant of ant colony optimization (ACO) has been used to successfully tackle a range of combinatorial optimization problems. For providing stronger evidence of the general applicability of negative learning ACO, we investigate how it can be adapted to solve the Maximum Satisfability problem (MaxSAT). The structure of MaxSAT is diferent from the problems considered to date and there exists only a few ACO approaches for MaxSAT. In this paper, we describe three negative learning ACO variants. They difer in the way in which sub-instances are solved at each algorithm iteration to provide negative feedback to the main ACO algorithm. In addition to using IBM ILOG CPLEX, two of these variants use existing MaxSAT solvers for this purpose. The experimental results show that the proposed negative learning ACO variants signifcantly outperform the baseline ACO as well as IBM ILOG CPLEX and the two MaxSAT solvers. This result is of special interest because it shows that negative learning ACO can be used to improve over the results of existing solvers by internally using them to solve smaller sub-instances

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1380452275
Document Type :
Electronic Resource