4.6 Article

Conditions for nonnegative independent component analysis

期刊

IEEE SIGNAL PROCESSING LETTERS
卷 9, 期 6, 页码 177-180

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IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LSP.2002.800502

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independent component analysis (ICA); nonnegative matrix factorization; sparse coding

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We consider the noiseless linear independent component analysis problem, in the case where the hidden sources s are nonnegative. We assume that the random variables s(i) are well grounded in that they have a nonvanishing probability density function (pdf) in the (positive) neighborhood of zero. For an orthonormal rotation y = Wx of prewhitened observations x = QAs, under certain reasonable conditions we show that y is a permutation of the s (apart from a scaling factor) if and only if y is nonnegative with probability 1. We suggest that this may enable the construction of practical learning algorithms, particularly for sparse nonnegative sources.

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