A Robust Spectral Algorithm for Overcomplete Tensor Decomposition

March 05, 2022 ยท Declared Dead ยท ๐Ÿ› Annual Conference Computational Learning Theory

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Authors Samuel B. Hopkins, Tselil Schramm, Jonathan Shi arXiv ID 2203.02790 Category cs.LG: Machine Learning Cross-listed cs.DS, math.NA Citations 24 Venue Annual Conference Computational Learning Theory Last Checked 3 months ago
Abstract
We give a spectral algorithm for decomposing overcomplete order-4 tensors, so long as their components satisfy an algebraic non-degeneracy condition that holds for nearly all (all but an algebraic set of measure $0$) tensors over $(\mathbb{R}^d)^{\otimes 4}$ with rank $n \le d^2$. Our algorithm is robust to adversarial perturbations of bounded spectral norm. Our algorithm is inspired by one which uses the sum-of-squares semidefinite programming hierarchy (Ma, Shi, and Steurer STOC'16, arXiv:1610.01980), and we achieve comparable robustness and overcompleteness guarantees under similar algebraic assumptions. However, our algorithm avoids semidefinite programming and may be implemented as a series of basic linear-algebraic operations. We consequently obtain a much faster running time than semidefinite programming methods: our algorithm runs in time $\tilde O(n^2d^3) \le \tilde O(d^7)$, which is subquadratic in the input size $d^4$ (where we have suppressed factors related to the condition number of the input tensor).
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