Title
Information-Theoretic Non-redundant Subspace Clustering.
Abstract
A comprehensive understanding of complex data requires multiple different views. Subspace clustering methods open up multiple interesting views since they support data objects to be assigned to different clusters in different subspaces. Conventional subspace clustering methods yield many redundant clusters or control redundancy by difficult to set parameters. In this paper, we employ concepts from information theory to naturally trade-off the two major properties of a subspace cluster: The quality of a cluster and its redundancy with respect to the other clusters. Our novel algorithm NORD (for NOn-ReDundant) efficiently discovers the truly relevant clusters in complex data sets without requiring any kind of threshold on their redundancy. NORD also exploits the concept of microclusters to support the detection of arbitrarily-shaped clusters. Our comprehensive experimental evaluation shows the effectiveness and efficiency of NORD on both synthetic and real-world data sets and provides a meaningful visualization of both the quality and the degree of the redundancy of the clustering result on first glance.
Year
Venue
Field
2017
PAKDD
Information theory,Data mining,Subspace topology,Computer science,Minimum description length,Complex data type,Linear subspace,Redundancy (engineering),Cluster analysis,Mixture model
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
10
2
Name
Order
Citations
PageRank
Nina Hubig1134.64
Claudia Plant253654.69