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Fourier PCA and Robust Tensor Decomposition

25 June 2013
Navin Goyal
Santosh Vempala
Ying Xiao
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Abstract

Fourier PCA is Principal Component Analysis of a matrix obtained from higher order derivatives of the logarithm of the Fourier transform of a distribution.We make this method algorithmic by developing a tensor decomposition method for a pair of tensors sharing the same vectors in rank-111 decompositions. Our main application is the first provably polynomial-time algorithm for underdetermined ICA, i.e., learning an n×mn \times mn×m matrix AAA from observations y=Axy=Axy=Ax where xxx is drawn from an unknown product distribution with arbitrary non-Gaussian components. The number of component distributions mmm can be arbitrarily higher than the dimension nnn and the columns of AAA only need to satisfy a natural and efficiently verifiable nondegeneracy condition. As a second application, we give an alternative algorithm for learning mixtures of spherical Gaussians with linearly independent means. These results also hold in the presence of Gaussian noise.

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