资源论文Near Optimal Frequent Directions for Sketching Dense and Sparse Matrices

Near Optimal Frequent Directions for Sketching Dense and Sparse Matrices

2020-03-20 | |  86 |   42 |   0

Abstract

Given a large matrix A 图片.png , we consider the problem of computing a sketch matrix B图片.png which is significantly smaller than but still well approximates A. We are interested in minimizing the covariance error 图片.png . We consider the problems in the streaming model, where the algorithm can only make one pass over the input with limited working space. The popular Frequent Directions algorithm of (Liberty, 2013) and its variants achieve optimal space-error trade off. However, whether the running time can be improved remains an unanswered question. In this paper, we almost settle the time complexity of this problem. In particular, we provide new space-optimal algorithms with faster running times. Moreover, we also show that the running times of our algorithms are near-optimal unless the state-of-the-art running time of matrix multiplication can be improved significantly.

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