DocumentCode :
60531
Title :
Randomized Dimensionality Reduction for k -Means Clustering
Author :
Boutsidis, Christos ; Zouzias, Anastasios ; Mahoney, Michael W. ; Drineas, Petros
Author_Institution :
Yahoo Labs., New York, NY, USA
Volume :
61
Issue :
2
fYear :
2015
fDate :
Feb. 2015
Firstpage :
1045
Lastpage :
1062
Abstract :
We study the topic of dimensionality reduction for k-means clustering. Dimensionality reduction encompasses the union of two approaches: 1) feature selection and 2) feature extraction. A feature selection-based algorithm for k-means clustering selects a small subset of the input features and then applies k-means clustering on the selected features. A feature extraction-based algorithm for k-means clustering constructs a small set of new artificial features and then applies k-means clustering on the constructed features. Despite the significance of k-means clustering as well as the wealth of heuristic methods addressing it, provably accurate feature selection methods for k-means clustering are not known. On the other hand, two provably accurate feature extraction methods for k-means clustering are known in the literature; one is based on random projections and the other is based on the singular value decomposition (SVD). This paper makes further progress toward a better understanding of dimensionality reduction for k-means clustering. Namely, we present the first provably accurate feature selection method for k-means clustering and, in addition, we present two feature extraction methods. The first feature extraction method is based on random projections and it improves upon the existing results in terms of time complexity and number of features needed to be extracted. The second feature extraction method is based on fast approximate SVD factorizations and it also improves upon the existing results in terms of time complexity. The proposed algorithms are randomized and provide constant-factor approximation guarantees with respect to the optimal k-means objective value.
Keywords :
approximation theory; computational complexity; feature extraction; feature selection; pattern clustering; randomised algorithms; singular value decomposition; approximate SVD factorizations; artificial features; constant-factor approximation; feature extraction-based algorithm; feature selection-based algorithm; heuristic methods; k-means clustering; optimal k-means objective value; random projections; randomized dimensionality reduction; singular value decomposition; time complexity; Approximation algorithms; Approximation methods; Clustering algorithms; Feature extraction; Linear matrix inequalities; Optimized production technology; Vectors; Clustering; clustering; dimensionality reduction; randomized algorithms;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2014.2375327
Filename :
6967844
Link To Document :
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