Ensemble learning for independent component analysis

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摘要

It is well known that the applicability of independent component analysis (ICA) to high-dimensional pattern recognition tasks such as face recognition often suffers from two problems. One is the small sample size problem. The other is the choice of basis functions (or independent components). Both problems make ICA classifier unstable and biased. In this paper, we propose an enhanced ICA algorithm by ensemble learning approach, named as random independent subspace (RIS), to deal with the two problems. Firstly, we use the random resampling technique to generate some low dimensional feature subspaces, and one classifier is constructed in each feature subspace. Then these classifiers are combined into an ensemble classifier using a final decision rule. Extensive experimentations performed on the FERET database suggest that the proposed method can improve the performance of ICA classifier.

论文关键词:Independent component analysis,Ensemble learning,Random independent subspace,Face recognition,Majority voting

论文评审过程:Received 14 June 2004, Revised 14 June 2005, Accepted 27 June 2005, Available online 11 October 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2005.06.018