DocumentCode :
1047830
Title :
On the Performance of Clustering in Hilbert Spaces
Author :
Biau, Gérard ; Devroye, Luc ; Lugosi, Gábor
Author_Institution :
LSTA & LPMA, Univ. Pierre et Marie Curie-Paris VI, Paris, France
Volume :
54
Issue :
2
fYear :
2008
Firstpage :
781
Lastpage :
790
Abstract :
Based on randomly drawn vectors in a separable Hilbert space, one may construct a k-means clustering scheme by minimizing an empirical squared error. We investigate the risk of such a clustering scheme, defined as the expected squared distance of a random vector X from the set of cluster centers. Our main result states that, for an almost surely bounded , the expected excess clustering risk is O(¿1/n) . Since clustering in high (or even infinite)-dimensional spaces may lead to severe computational problems, we examine the properties of a dimension reduction strategy for clustering based on Johnson-Lindenstrauss-type random projections. Our results reflect a tradeoff between accuracy and computational complexity when one uses k-means clustering after random projection of the data to a low-dimensional space. We argue that random projections work better than other simplistic dimension reduction schemes.
Keywords :
Hilbert spaces; errors; minimisation; vector quantisation; Hilbert spaces; Johnson-Lindenstrauss-type random projections; dimension reduction strategy; empirical squared error minimization; expected squared distance; k-means clustering scheme; random vector; Biology; Computational complexity; Computer science; Data analysis; Data compression; Hilbert space; Kernel; Risk management; Unsupervised learning; Vector quantization; $k$-means; Clustering; Hilbert space; empirical risk minimization; random projections; vector quantization;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2007.913516
Filename :
4439834
Link To Document :
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