Robust and Sample Optimal Algorithms for PSD Low-Rank Approximation
Ainesh Bakshi, Nadiia Chepurko, David P. Woodruff

TL;DR
This paper presents optimal algorithms for low-rank approximation of PSD matrices, improving query complexity and extending to noisy and negative-type distance matrices, achieving near-optimal or optimal results.
Contribution
It resolves the open question of query complexity for PSD low-rank approximation, matching the lower bound, and extends techniques to noisy matrices and negative-type distances.
Findings
Achieves $O(nk/psilon)$ query complexity for PSD low-rank approximation.
Provides sublinear time algorithms for noisy correlation matrices.
Extends methods to negative-type distance matrices, including and metrics.
Abstract
Recently, Musco and Woodruff (FOCS, 2017) showed that given an positive semidefinite (PSD) matrix , it is possible to compute a -approximate relative-error low-rank approximation to by querying entries of in time . They also showed that any relative-error low-rank approximation algorithm must query entries of , this gap has since remained open. Our main result is to resolve this question by obtaining an optimal algorithm that queries entries of and outputs a relative-error low-rank approximation in time. Note, our running time improves that of Musco and Woodruff, and matches the information-theoretic lower bound if the matrix-multiplication exponent is . We then extend our…
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