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Spectral norm of random tensors

7 July 2014
Ryota Tomioka
Taiji Suzuki
    MDE
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Abstract

We show that the spectral norm of a random n1×n2×⋯×nKn_1\times n_2\times \cdots \times n_Kn1​×n2​×⋯×nK​ tensor (or higher-order array) scales as O((∑k=1Knk)log⁡(K))O\left(\sqrt{(\sum_{k=1}^{K}n_k)\log(K)}\right)O((∑k=1K​nk​)log(K)​) under some sub-Gaussian assumption on the entries. The proof is based on a covering number argument. Since the spectral norm is dual to the tensor nuclear norm (the tightest convex relaxation of the set of rank one tensors), the bound implies that the convex relaxation yields sample complexity that is linear in (the sum of) the number of dimensions, which is much smaller than other recently proposed convex relaxations of tensor rank that use unfolding.

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