On semi-supervised fuzzy c-means clustering for data with clusterwise tolerance by opposite criteria

On semi-supervised fuzzy c-means clustering for data with clusterwise tolerance by opposite criteria

Authors:   Hamasuna Y, Endo Y

Publication Year:   2013

Reference:  Soft Computing, 17(1):71-81 (January 2013) (Published online 9 August 2012)

Abstract

This paper presents a new semi-supervised fuzzy c-means clustering for data with clusterwise tolerance by opposite criteria. In semi-supervised clustering, pairwise constraints, that is, must-link and cannot-link, are frequently used in order to improve clustering performances. From the viewpoint of handling pairwise constraints, a new semi-supervised fuzzy c-means clustering is proposed by introducing clusterwise tolerance-based pairwise constraints. First, a concept of clusterwise tolerance-based pairwise constraints is introduced. Second, the optimization problems of the proposed method are formulated. Especially, must-link and cannot-link are handled by opposite criteria in our proposed method. Third, a new clustering algorithm is constructed based on the above discussions. Finally, the effectiveness of the proposed algorithm is verified through numerical examples.
KEYWORDS: Clusterwise tolerance; Fuzzy c-means clustering; Pairwise constraints; Semi-supervised clustering

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