Polynomial Tensor Sketch for Element-wise Function of Low-Rank Matrix

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This paper studies how to sketch element-wise functions of low-rank matrices. Formally, given low-rank matrix A = [Aij] and scalar non-linear function f, we aim for finding an approximated low-rank representation of the (possibly high-rank) matrix [f(Aij)]. To this end, we propose an efficient sketching-based algorithm whose complexity is significantly lower than the number of entries of A, i.e., it runs without accessing all entries of [f(Aij)] explicitly. The main idea underlying our method is to combine a polynomial approximation of f with the existing tensor sketch scheme for approximating monomials of entries of A. To balance the errors of the two approximation components in an optimal manner, we propose a novel regression formula to find polynomial coefficients given A and f. In particular, we utilize a coreset-based regression with a rigorous approximation guarantee. Finally, we demonstrate the applicability and superiority of the proposed scheme under various machine learning tasks.
Publisher
International Conference on Machine Learning
Issue Date
2020-07-15
Language
English
Citation

Thirty-seventh International Conference on Machine Learning, ICML 2020, pp.3942 - 3951

ISSN
2640-3498
URI
http://hdl.handle.net/10203/278494
Appears in Collection
RIMS Conference Papers
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