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arxiv: 1610.01980 · v1 · pith:7LXJMYVKnew · submitted 2016-10-06 · 💻 cs.DS · cs.LG

Polynomial-time Tensor Decompositions with Sum-of-Squares

classification 💻 cs.DS cs.LG
keywords analysissum-of-squaresovercompletedecomposinggiverelaxationsspectraltensor
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We give new algorithms based on the sum-of-squares method for tensor decomposition. Our results improve the best known running times from quasi-polynomial to polynomial for several problems, including decomposing random overcomplete 3-tensors and learning overcomplete dictionaries with constant relative sparsity. We also give the first robust analysis for decomposing overcomplete 4-tensors in the smoothed analysis model. A key ingredient of our analysis is to establish small spectral gaps in moment matrices derived from solutions to sum-of-squares relaxations. To enable this analysis we augment sum-of-squares relaxations with spectral analogs of maximum entropy constraints.

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