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Soft Computing Approaches on the Bandwidth Problem
Volume 24, Issue 2 (2013), pp. 169–180
Gabriela Czibula   Gloria-Cerasela Crişan   Camelia-M. Pintea   Istvan-Gergely Czibula  

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https://doi.org/10.15388/Informatica.2013.390
Pub. online: 1 January 2013      Type: Research Article     

Received
1 August 2011
Accepted
1 June 2012
Published
1 January 2013

Abstract

The Matrix Bandwidth Minimization Problem (MBMP) seeks for a simultaneous reordering of the rows and the columns of a square matrix such that the nonzero entries are collected within a band of small width close to the main diagonal. The MBMP is a NP-complete problem, with applications in many scientific domains, linear systems, artificial intelligence, and real-life situations in industry, logistics, information recovery. The complex problems are hard to solve, that is why any attempt to improve their solutions is beneficent. Genetic algorithms and ant-based systems are Soft Computing methods used in this paper in order to solve some MBMP instances. Our approach is based on a learning agent-based model involving a local search procedure. The algorithm is compared with the classical Cuthill-McKee algorithm, and with a hybrid genetic algorithm, using several instances from Matrix Market collection. Computational experiments confirm a good performance of the proposed algorithms for the considered set of MBMP instances. On Soft Computing basis, we also propose a new theoretical Reinforcement Learning model for solving the MBMP.

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Keywords
natorial optimization matrix bandwidth minimization problem soft computing reinforcement learning

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INFORMATICA

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