Constrained Independent Component Analysis

Lu, Wei, Rajapakse, Jagath C.

Neural Information Processing Systems 

The paper presents a novel technique of constrained independent component analysis (CICA) to introduce constraints into the classical ICAand solve the constrained optimization problem by using Lagrange multiplier methods. This paper shows that CICA can be used to order the resulted independent components in a specific manner and normalize the demixing matrix in the signal separation procedure. It can systematically eliminate the ICA's indeterminacy on permutation and dilation. The experiments demonstrate the use of CICA in ordering of independent components while providing normalized demixing processes. Keywords: Independent component analysis, constrained independent componentanalysis, constrained optimization, Lagrange multiplier methods 1 Introduction Independent component analysis (ICA) is a technique to transform a multivariate randomsignal into a signal with components that are mutually independent in complete statistical sense [1]. There has been a growing interest in research for efficient realization of ICA neural networks (ICNNs).

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