Cluster analysis via projection onto convex sets

Author:

Tran Le-Anh1,Kwon Daehyun2,Deberneh Henock Mamo3,Park Dong-Chul1

Affiliation:

1. Department of Electronics Engineering, Myongji University, Gyeonggi, Korea

2. Department of Information Technology Polish Management, Soongsil University, Seoul, Korea and Automation Research Institute, LS ELECTRIC, Anyang, Korea

3. Department of Biochemistry and Molecular Biology, University of Texas Medical Branch, TX, USA

Abstract

This paper proposes a data clustering algorithm that is inspired by the prominent convergence property of the Projection onto Convex Sets (POCS) method, termed the POCS-based clustering algorithm. For disjoint convex sets, the form of simultaneous projections of the POCS method can result in a minimum mean square error solution. Relying on this important property, the proposed POCS-based clustering algorithm treats each data point as a convex set and simultaneously projects the cluster prototypes onto respective member data points, the projections are convexly combined via adaptive weight values in order to minimize a predefined objective function for data clustering purposes. The performance of the proposed POCS-based clustering algorithm has been verified through a large scale of experiments and data sets. The experimental results have shown that the proposed POCS-based algorithm is competitive in terms of both effectiveness and efficiency against some of the prevailing clustering approaches such as the K-Means/K-Means+⁣+ and Fuzzy C-Means (FCM) algorithms. Based on extensive comparisons and analyses, we can confirm the validity of the proposed POCS-based clustering algorithm for practical purposes.

Publisher

IOS Press

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