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Information maximization and independent component analysis; is there a difference?

作者信息

Obradovic D, Deco G

机构信息

Siemens AG, Corporate Research, Otto Hahn Ring 6, 81739, Munich, DE.

出版信息

Neural Comput. 1998 Nov 15;10(8):2085-101. doi: 10.1162/089976698300016972.

DOI:10.1162/089976698300016972
PMID:9804672
Abstract

This article provides a detailed and rigorous analysis of the two commonly used methods for redundancy reduction: linear independent component analysis (ICA) posed as a direct minimization of a suitably chosen redundancy measure and information maximization (InfoMax) of a continuous stochastic signal transmitted through an appropriate nonlinear network. The article shows analytically that ICA based on the Kullback-Leibler information as a redundancy measure and InfoMax lead to the same solution if the parameterization of the output nonlinear functions in the latter method is sufficiently rich. Furthermore, this work discusses the alternative redundancy measures not based on the Kullback-Leibler information distance. The practical issues of applying ICA and InfoMax are also discussed and illustrated on the problem of extracting statistically independent factors from a linear, pixel-by-pixel mixture of images.

摘要

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