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Cluster Analysis via Stochastic Approximation Monte CarloCluster Analysis via Stochastic Approximation Monte Carlo

Other Titles
Cluster Analysis via Stochastic Approximation Monte Carlo
Authors
전수영이은표진서훈
Issue Date
2009
Publisher
한국자료분석학회
Keywords
k-means clustering; Stochastic approximation Monte Carlo; Local trap problem; Minimum partition error criterion.
Citation
Journal of The Korean Data Analysis Society, v.11, no.4, pp.1749 - 1760
Indexed
KCI
Journal Title
Journal of The Korean Data Analysis Society
Volume
11
Number
4
Start Page
1749
End Page
1760
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/121350
ISSN
1229-2354
Abstract
The k-means clustering is one of the simplest unsupervised algorithm used generally in solving clustering problems. However, it may rely on the initial cluster seed and thus it is suffer from the local trap problem due to that its system has multiple local energy minima in a rugged energy landscape. Hence, the global optimal clustering may not be identified. This paper focuses on this problem, and thus we propose to use the Stochastic approximation Monte Carlo(SAMC) algorithm implementing the k-means clustering method to overcome the local trap problem in clustering analysis. SAMC is a general importance sampling and optimization algorithm to search the sample space broadly and escape from the local trap problem regardless of the initial point. The algorithm is tested on simulated and the real dataset, and compared with the k-means clustering algorithm. The numerical results are in favor of SAMC based on the minimization criterion.
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