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Overcomplete Tensor Decomposition via Koszul-Young Flattenings

21 November 2024
Pravesh K. Kothari
Ankur Moitra
Alexander S. Wein
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Abstract

Motivated by connections between algebraic complexity lower bounds and tensor decompositions, we investigate Koszul-Young flattenings, which are the main ingredient in recent lower bounds for matrix multiplication. Based on this tool we give a new algorithm for decomposing an n1×n2×n3n_1 \times n_2 \times n_3n1​×n2​×n3​ tensor as the sum of a minimal number of rank-1 terms, and certifying uniqueness of this decomposition. For n1≤n2≤n3n_1 \le n_2 \le n_3n1​≤n2​≤n3​ with n1→∞n_1 \to \inftyn1​→∞ and n3/n2=O(1)n_3/n_2 = O(1)n3​/n2​=O(1), our algorithm is guaranteed to succeed when the tensor rank is bounded by r≤(1−ϵ)(n2+n3)r \le (1-\epsilon)(n_2 + n_3)r≤(1−ϵ)(n2​+n3​) for an arbitrary ϵ>0\epsilon > 0ϵ>0, provided the tensor components are generically chosen. For any fixed ϵ\epsilonϵ, the runtime is polynomial in n3n_3n3​. When n2=n3=nn_2 = n_3 = nn2​=n3​=n, our condition on the rank gives a factor-of-2 improvement over the classical simultaneous diagonalization algorithm, which requires r≤nr \le nr≤n, and also improves on the recent algorithm of Koiran (2024) which requires r≤4n/3r \le 4n/3r≤4n/3. It also improves on the PhD thesis of Persu (2018) which solves rank detection for r≤3n/2r \leq 3n/2r≤3n/2. We complement our upper bounds by showing limitations, in particular that no flattening of the style we consider can surpass rank n2+n3n_2 + n_3n2​+n3​. Furthermore, for n×n×nn \times n \times nn×n×n tensors, we show that an even more general class of degree-ddd polynomial flattenings cannot surpass rank CnCnCn for a constant C=C(d)C = C(d)C=C(d). This suggests that for tensor decompositions, the case of generic components may be fundamentally harder than that of random components, where efficient decomposition is possible even in highly overcomplete settings.

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