DocumentCode
1754992
Title
Dimension Selective Self-Organizing Maps With Time-Varying Structure for Subspace and Projected Clustering
Author
Bassani, Hansenclever F. ; Araujo, Aluizio F. R.
Author_Institution
Center of Inf., Fed. Univ. of Pernambuco, Recife, Brazil
Volume
26
Issue
3
fYear
2015
fDate
42064
Firstpage
458
Lastpage
471
Abstract
Subspace clustering is the task of identifying clusters in subspaces of the input dimensions of a given dataset. Noisy data in certain attributes cause difficulties for traditional clustering algorithms, because the high discrepancies within them can make objects appear too different to be grouped in the same cluster. This requires methods specially designed for subspace clustering. This paper presents our second approach to subspace and projected clustering based on self-organizing maps (SOMs), which is a local adaptive receptive field dimension selective SOM. By introducing a time-variant topology, our method is an improvement in terms of clustering quality, computational cost, and parameterization. This enables the method to identify the correct number of clusters and their respective relevant dimensions, and thus it presents nearly perfect results in synthetic datasets and surpasses our previous method in most of the real-world datasets considered.
Keywords
pattern clustering; self-organising feature maps; SOM; clustering quality; computational cost; dimension selective self-organizing maps; projected clustering; subspace clustering; time-variant topology; time-varying structure; Clustering algorithms; Computer vision; Convergence; Decision support systems; Mathematical model; Topology; Vectors; High-dimensional data; local receptive field; relevance learning; self-organizing maps (SOMs); subspace clustering; subspace clustering.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2315571
Filename
6803941
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