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Reseach Article

Applying Evolutionary Clustering Technique for finding the most Significant Solution from the Large Result Set obtained in Multi-Objective Evolutionary Algorithms

Published on March 2012 by P.M.Chaudhari, R.V. Dharaskar, V. M. Thakare
2nd National Conference on Innovative Paradigms in Engineering and Technology (NCIPET 2013)
Foundation of Computer Science USA
NCIPET - Number 14
March 2012
Authors: P.M.Chaudhari, R.V. Dharaskar, V. M. Thakare
a4e0fa40-0413-4b48-8368-c9655fc7bf67

P.M.Chaudhari, R.V. Dharaskar, V. M. Thakare . Applying Evolutionary Clustering Technique for finding the most Significant Solution from the Large Result Set obtained in Multi-Objective Evolutionary Algorithms. 2nd National Conference on Innovative Paradigms in Engineering and Technology (NCIPET 2013). NCIPET, 14 (March 2012), 17-22.

@article{
author = { P.M.Chaudhari, R.V. Dharaskar, V. M. Thakare },
title = { Applying Evolutionary Clustering Technique for finding the most Significant Solution from the Large Result Set obtained in Multi-Objective Evolutionary Algorithms },
journal = { 2nd National Conference on Innovative Paradigms in Engineering and Technology (NCIPET 2013) },
issue_date = { March 2012 },
volume = { NCIPET },
number = { 14 },
month = { March },
year = { 2012 },
issn = 0975-8887,
pages = { 17-22 },
numpages = 6,
url = { /proceedings/ncipet/number14/5296-1108/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 2nd National Conference on Innovative Paradigms in Engineering and Technology (NCIPET 2013)
%A P.M.Chaudhari
%A R.V. Dharaskar
%A V. M. Thakare
%T Applying Evolutionary Clustering Technique for finding the most Significant Solution from the Large Result Set obtained in Multi-Objective Evolutionary Algorithms
%J 2nd National Conference on Innovative Paradigms in Engineering and Technology (NCIPET 2013)
%@ 0975-8887
%V NCIPET
%N 14
%P 17-22
%D 2012
%I International Journal of Computer Applications
Abstract

Multicriteria optimization applications can be implemented using Pareto optimization techniques including evolutionary Multicriteria optimization algorithms. Many real world applications involve multiple objective functions and the Pareto front may contain a very large number of points. Choosing a solution from such a large set is potentially intractable for a decision maker. Previous approaches to this problem aimed to find a representative subset of the solution set. Clustering techniques can be used to organize and classify the solutions. A Evolutionary algorithm-based k-means clustering technique is proposed in this paper. The searching capability of Evolutionary algorithms is exploited in order to search for appropriate cluster centres in the feature space such that a similarity metric of the resulting clusters is optimized. The chromosomes, which are represented as strings of real numbers, encode the centres of a fixed number of clusters. Applicability of this methodology for various applications and in a decision support system is also discussed.

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Index Terms

Computer Science
Information Sciences

Keywords

Multiobjective Pareto front Clustering techniques