4.7 Article

A feature group weighting method for subspace clustering of high-dimensional data

Journal

PATTERN RECOGNITION
Volume 45, Issue 1, Pages 434-446

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2011.06.004

Keywords

Data mining; Subspace clustering; k-Means; Feature weighting; High-dimensional data analysis

Funding

  1. NSFC [61073195]
  2. Shenzhen New Industry Development Fund [CX8201005250024A, CXB201005250021A]

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This paper proposes a new method to weight subspaces in feature groups and individual features for clustering high-dimensional data. In this method, the features of high-dimensional data are divided into feature groups, based on their natural characteristics. Two types of weights are introduced to the clustering process to simultaneously identify the importance of feature groups and individual features in each cluster. A new optimization model is given to define the optimization process and a new clustering algorithm FG-k-means is proposed to optimize the optimization model. The new algorithm is an extension to k-means by adding two additional steps to automatically calculate the two types of subspace weights. A new data generation method is presented to generate high-dimensional data with clusters in subspaces of both feature groups and individual features. Experimental results on synthetic and real-life data have shown that the FG-k-means algorithm significantly outperformed four k-means type algorithms, i.e., k-means, W-k-means, LAC and EWKM in almost all experiments. The new algorithm is robust to noise and missing values which commonly exist in high-dimensional data. (C) 2011 Elsevier Ltd. All rights reserved.

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