Cluster Ensembles - A Knowledge Reuse Framework for Combining Multiple Partitions-英文文献.pdf
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Cluster Ensembles - A Knowledge Reuse Framework for Combining Multiple Partitions-英文文献
Journal of Machine Learning Research 3 (2002) 583-617 Submitted 4/02; Published 12/02
Cluster Ensembles – A Knowledge Reuse Framework for
Combining Multiple Partitions
Alexander Strehl alexander@
Joydeep Ghosh ghosh@
Department of Electrical and Computer Engineering
The University of Texas at Austin
Austin, TX 78712, USA
Editor: Claire Cardie
Abstract
This paper introduces the problem of combining multiple partitionings of a set of objects
into a single consolidated clustering without accessing the features or algorithms that deter-
mined these partitionings. We first identify several application scenarios for the resultant
‘knowledge reuse’ framework that we call cluster ensembles. The cluster ensemble prob-
lem is then formalized as a combinatorial optimization problem in terms of shared mutual
information. In addition to a direct maximization approach, we propose three effective
and efficient techniques for obtaining high-quality combiners (consensus functions). The
first combiner induces a similarity measure from the partitionings and then reclusters the
objects. The second combiner is based on hypergraph partitioning. The third one collapses
groups of clusters into meta-clusters which then compete for each object to determine the
combined clustering. Due to the low computational costs of our techniques, it is quite
feasible to use a supra-consensus function that evaluates all three approaches against the
objective function and picks the best solution for a given situation. We evaluate the ef-
fectiveness of cluster ensembles in three qualit
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