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Approximate Low-Rank Decomposition for Real Symmetric Tensors

Arnold Mathematical Journal (JAM), 2022
Abstract

We investigate the effect of an ε\varepsilon-room of perturbation tolerance on symmetric tensor decomposition from an algorithmic perspective. More precisely, we prove theorems and design algorithms for the following problem: Suppose a real symmetric dd-tensor ff, a norm .||.|| on the space of symmetric dd-tensors, and ε>0\varepsilon >0 error tolerance with respect to .||.|| are given. What is the smallest symmetric tensor rank in the ε\varepsilon-neighborhood of ff? In other words, what is the symmetric tensor rank of ff after a clever ε\varepsilon-perturbation? We provide two different theoretical bounds and three algorithms for approximate symmetric tensor rank estimation. Our first result is a randomized energy increment algorithm for the case of LpL_p-norms. Our second result is a simple sampling-based algorithm, inspired by some techniques in geometric functional analysis, that works for any norm. We also provide a supplementary algorithm in the case of the Hilbert-Schmidt norm. All our algorithms come with rigorous complexity estimates, which in turn yield our two main theorems on symmetric tensor rank with ε\varepsilon-room of tolerance. We also report on our experiments with a preliminary implementation of the energy increment algorithm.

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