DocumentCode :
1398621
Title :
Feature Selection and Kernel Learning for Local Learning-Based Clustering
Author :
Zeng, Hong ; Cheung, Yiu-Ming
Author_Institution :
Sch. of Instrum. Sci. & Eng., Southeast Univ., Nanjing, China
Volume :
33
Issue :
8
fYear :
2011
Firstpage :
1532
Lastpage :
1547
Abstract :
The performance of the most clustering algorithms highly relies on the representation of data in the input space or the Hilbert space of kernel methods. This paper is to obtain an appropriate data representation through feature selection or kernel learning within the framework of the Local Learning-Based Clustering (LLC) (Wu and Schölkopf 2006) method, which can outperform the global learning-based ones when dealing with the high-dimensional data lying on manifold. Specifically, we associate a weight to each feature or kernel and incorporate it into the built-in regularization of the LLC algorithm to take into account the relevance of each feature or kernel for the clustering. Accordingly, the weights are estimated iteratively in the clustering process. We show that the resulting weighted regularization with an additional constraint on the weights is equivalent to a known sparse-promoting penalty. Hence, the weights of those irrelevant features or kernels can be shrunk toward zero. Extensive experiments show the efficacy of the proposed methods on the benchmark data sets.
Keywords :
Hilbert spaces; learning (artificial intelligence); pattern clustering; Hilbert space; data representation; feature selection; kernel learning; local learning-based clustering; sparse-promoting penalty; Algorithm design and analysis; Clustering algorithms; Inference algorithms; Kernel; Learning systems; Machine learning; Manifolds; High-dimensional data; feature selection; kernel learning; local learning-based clustering; sparse weighting.;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2010.215
Filename :
5661784
Link To Document :
بازگشت