Effective Tensor Sketching via Sparsification

In this paper, we investigate effective sketching schemes via sparsification for high dimensional multilinear arrays or tensors. More specifically, we propose a novel tensor sparsification algorithm that retains a subset of the entries of a tensor in a judicious way, and prove that it can attain a given level of approximation accuracy in terms of tensor spectral norm with a much smaller sample complexity when compared with existing approaches. In particular, we show that for a th order cubic tensor of {\it stable rank} , the sample size requirement for achieving a relative error is, up to a logarithmic factor, of the order when is relatively large, and and essentially optimal when is sufficiently small. It is especially noteworthy that the sample size requirement for achieving a high accuracy is of an order independent of . To further demonstrate the utility of our techniques, we also study how higher order singular value decomposition (HOSVD) of large tensors can be efficiently approximated via sparsification.
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