Dynamic Data Clustering Using Stochastic Approximation Driven Multi-Dimensional Particle Swarm Optimization
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Date
2010
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Volume Title
Publisher
Springer Verlag
Open Access Color
Green Open Access
No
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No
Abstract
With an ever-growing attention Particle Swarm Optimization (PSO) has found many application areas for many challenging optimization problems. It is, however, a known fact that PSO has a severe drawback in the update of its global best (gbest) particle, which has a crucial role of guiding the rest of the swarm. In this paper, we propose two efficient solutions to remedy this problem using a stochastic approximation (SA) technique. For this purpose we use simultaneous perturbation stochastic approximation (SPSA), which is applied only to the gbest (not to the entire swarm) for a low-cost solution. Since the problem of poor gbest update persists in the recently proposed extension of PSO, called multi-dimensional PSO (MD-PSO), two distinct SA approaches are then integrated into MD-PSO and tested over a set of unsupervised data clustering applications. Experimental results show that the proposed approaches significantly improved the quality of the MD-PSO clustering as measured by a validity index function. Furthermore, the proposed approaches are generic as they can be used with other PSO variants and applicable to a wide range of problems. © 2010 Springer-Verlag Berlin Heidelberg.
Description
Centre for Emergent Computing at Edinburgh Napier University;Istanbul Technical University;Microsoft Turkey;Scientific and Technological Research Council of Turkey
EvoCOMPLEX, EvoGAMES, EvoIASP, EvoINTELLIGENCE, EvoNUM, and EvoSTOC, EvoApplicatons 2010 -- 7 April 2010 through 9 April 2010 -- Istanbul -- 80273
EvoCOMPLEX, EvoGAMES, EvoIASP, EvoINTELLIGENCE, EvoNUM, and EvoSTOC, EvoApplicatons 2010 -- 7 April 2010 through 9 April 2010 -- Istanbul -- 80273
Keywords
Dynamic data clustering, Gradient descent, Multi-dimensional search, Particle Swarm Optimization, Stochastic approximation, Approximation theory, Cluster analysis, Clustering algorithms, Gradient methods, Stochastic systems, Traffic signals, Dynamic data, Gradient descent, Low-cost solution, Multi dimensional, Multi-dimensional particle swarm optimizations, Optimization problems, Simultaneous perturbation stochastic approximation, Stochastic approximations, Particle swarm optimization (PSO)
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N/A
Scopus Q
Q3

OpenCitations Citation Count
1
Source
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Volume
6024 LNCS
Issue
PART 1
Start Page
336
End Page
343
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CrossRef : 1
Scopus : 1
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2
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4
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