资源论文Nonconvex Low-Rank Symmetric Tensor Completion from Noisy Data

Nonconvex Low-Rank Symmetric Tensor Completion from Noisy Data

2020-02-21 | |  36 |   30 |   0

Abstract

We study a completion problem of broad practical interest: the reconstruction of a low-rank symmetric tensor from highly incomplete and randomly corrupted observations of its entries. While a variety of prior work has been dedicated to this problem, prior algorithms either are computationally too expensive for largescale applications, or come with sub-optimal statistical guarantees. Focusing on “incoherent” and well-conditioned tensors of a constant CP rank, we propose a two-stage nonconvex algorithm — (vanilla) gradient descent following a rough initialization — that achieves the best of both worlds. Specifically, the proposed nonconvex algorithm faithfully completes the tensor and retrieves all low-rank tensor factors within nearly linear time, while at the same time enjoying nearoptimal statistical guarantees (i.e. minimal sample complexity and optimal 图片.png and 图片.png statistical accuracy). The insights conveyed through our analysis of nonconvex optimization might have implications for other tensor estimation problems.

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