Approximation Algorithms for $\ell_0$-Low Rank Approximation
October 30, 2017 Β· Declared Dead Β· π Neural Information Processing Systems
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Authors
Karl Bringmann, Pavel Kolev, David P. Woodruff
arXiv ID
1710.11253
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DM,
cs.LG,
stat.ML
Citations
13
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
We study the $\ell_0$-Low Rank Approximation Problem, where the goal is, given an $m \times n$ matrix $A$, to output a rank-$k$ matrix $A'$ for which $\|A'-A\|_0$ is minimized. Here, for a matrix $B$, $\|B\|_0$ denotes the number of its non-zero entries. This NP-hard variant of low rank approximation is natural for problems with no underlying metric, and its goal is to minimize the number of disagreeing data positions. We provide approximation algorithms which significantly improve the running time and approximation factor of previous work. For $k > 1$, we show how to find, in poly$(mn)$ time for every $k$, a rank $O(k \log(n/k))$ matrix $A'$ for which $\|A'-A\|_0 \leq O(k^2 \log(n/k)) \mathrm{OPT}$. To the best of our knowledge, this is the first algorithm with provable guarantees for the $\ell_0$-Low Rank Approximation Problem for $k > 1$, even for bicriteria algorithms. For the well-studied case when $k = 1$, we give a $(2+Ξ΅)$-approximation in {\it sublinear time}, which is impossible for other variants of low rank approximation such as for the Frobenius norm. We strengthen this for the well-studied case of binary matrices to obtain a $(1+O(Ο))$-approximation in sublinear time, where $Ο= \mathrm{OPT}/\lVert A\rVert_0$. For small $Ο$, our approximation factor is $1+o(1)$.
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