A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm

Data clustering is one of the most important areas of research in data mining and knowledge discovery. Recent research in this area has shown that the best clustering results can be achieved using multi-objective methods. In other words, assuming more than one criterion as objective functions for cl...

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Main Authors: P. Shahsamandi Esfahani, A. Saghaei
Format: Article
Language:English
Published: Shahrood University of Technology 2017-07-01
Series:Journal of Artificial Intelligence and Data Mining
Subjects:
Online Access:http://jad.shahroodut.ac.ir/article_784_775b7821cb7901fb08dc2a13de73591c.pdf
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spelling doaj-7cf197d1faec44788045d68e7401ab772020-11-24T22:08:43ZengShahrood University of TechnologyJournal of Artificial Intelligence and Data Mining2322-52112322-44442017-07-015230731710.22044/jadm.2016.784784A Multi-Objective Approach to Fuzzy Clustering using ITLBO AlgorithmP. Shahsamandi Esfahani0A. Saghaei1Department of Industrial engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.Department of Industrial engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.Data clustering is one of the most important areas of research in data mining and knowledge discovery. Recent research in this area has shown that the best clustering results can be achieved using multi-objective methods. In other words, assuming more than one criterion as objective functions for clustering data can measurably increase the quality of clustering. In this study, a model with two contradictory objective functions based on maximum data compactness in clusters (the degree of proximity of data) and maximum cluster separation (the degree of remoteness of clusters’ centers) is proposed. In order to solve this model, a recently proposed optimization method, the Multi-objective Improved Teaching Learning Based Optimization (MOITLBO) algorithm, is used. This algorithm is tested on several datasets and its clusters are compared with the results of some single-objective algorithms. Furthermore, with respect to noise, the comparison of the performance of the proposed model with another multi-objective model shows that it is robust to noisy data sets and thus can be efficiently used for multi-objective fuzzy clustering.http://jad.shahroodut.ac.ir/article_784_775b7821cb7901fb08dc2a13de73591c.pdfFuzzy clusteringCluster validity measureMulti-objective optimizationmeta-heuristic algorithmsImproved Teaching-Learning Based Optimization
collection DOAJ
language English
format Article
sources DOAJ
author P. Shahsamandi Esfahani
A. Saghaei
spellingShingle P. Shahsamandi Esfahani
A. Saghaei
A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm
Journal of Artificial Intelligence and Data Mining
Fuzzy clustering
Cluster validity measure
Multi-objective optimization
meta-heuristic algorithms
Improved Teaching-Learning Based Optimization
author_facet P. Shahsamandi Esfahani
A. Saghaei
author_sort P. Shahsamandi Esfahani
title A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm
title_short A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm
title_full A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm
title_fullStr A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm
title_full_unstemmed A Multi-Objective Approach to Fuzzy Clustering using ITLBO Algorithm
title_sort multi-objective approach to fuzzy clustering using itlbo algorithm
publisher Shahrood University of Technology
series Journal of Artificial Intelligence and Data Mining
issn 2322-5211
2322-4444
publishDate 2017-07-01
description Data clustering is one of the most important areas of research in data mining and knowledge discovery. Recent research in this area has shown that the best clustering results can be achieved using multi-objective methods. In other words, assuming more than one criterion as objective functions for clustering data can measurably increase the quality of clustering. In this study, a model with two contradictory objective functions based on maximum data compactness in clusters (the degree of proximity of data) and maximum cluster separation (the degree of remoteness of clusters’ centers) is proposed. In order to solve this model, a recently proposed optimization method, the Multi-objective Improved Teaching Learning Based Optimization (MOITLBO) algorithm, is used. This algorithm is tested on several datasets and its clusters are compared with the results of some single-objective algorithms. Furthermore, with respect to noise, the comparison of the performance of the proposed model with another multi-objective model shows that it is robust to noisy data sets and thus can be efficiently used for multi-objective fuzzy clustering.
topic Fuzzy clustering
Cluster validity measure
Multi-objective optimization
meta-heuristic algorithms
Improved Teaching-Learning Based Optimization
url http://jad.shahroodut.ac.ir/article_784_775b7821cb7901fb08dc2a13de73591c.pdf
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