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https://scholarbank.nus.edu.sg/handle/10635/77834
Title: | Consensus clustering | Authors: | Hu, T. Sung, S.Y. |
Keywords: | centroid clustering Cluster analysis consensus clustering distance function entropy |
Issue Date: | 2005 | Citation: | Hu, T.,Sung, S.Y. (2005). Consensus clustering. Intelligent Data Analysis 9 (6) : 551-565. ScholarBank@NUS Repository. | Abstract: | We address the consensus clustering problem of combining multiple partitions of a set of objects into a single consolidated partition. The input here is a set of cluster labelings and we do not access the original data or clustering algorithms that determine these partitions. After introducing the distribution-based view of partitions, we propose a series of entropy-based distance functions for comparing various partitions. Given a candidate partition set, consensus clustering is then formalized as an optimization problem of searching for a centroid partition with the smallest distance to that set. In addition to directly selecting the local centroid candidate, we also present two combining methods based on similarity-based graph partitioning. Under certain conditions, the centroid partition is likely to be top/middle-ranked in terms of closeness to the true partition. Finally we evaluate its effectiveness on both artificial and real datasets, with candidates from either the full space or the subspace. © 2005-IOS Press and the authors. All rights reserved. | Source Title: | Intelligent Data Analysis | URI: | http://scholarbank.nus.edu.sg/handle/10635/77834 | ISSN: | 1088467X |
Appears in Collections: | Staff Publications |
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