K-maximin clustering: a maximin correlation approach to partition-based clustering
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概要
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We propose a new clustering algorithm based upon the maximin correlation analysis (MCA), a learning technique that can minimize the maximum misclassification risk. The proposed algorithm resembles conventional partition clustering algorithms such as k-means in that data objects are partitioned into k disjoint partitions. On the other hand, the proposed approach is unique in that an MCA-based approach is used to decide the location of the representative point for each partition. We test the proposed technique with typography data and show our approach outperforms the popular k-means and k-medoids clustering in terms of retrieving the inherent cluster membership.
著者
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CHUNG Eui-Young
Electrical Engineering, Yonsei University
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Kim Seung
Electrical Eng., Stanford University
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Lee Taehoon
Electrical Eng., Korea University
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Yoon Sungroh
Electrical Eng., Korea University
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Chung Eui-Young
Electrical and Electronic Eng., Yonsei University
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