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Local reconstruction of low‐rank matrices and subspaces
Authors:Roee David  Elazar Goldenberg  Robert Krauthgamer
Affiliation:1. Weizmann Institute of Science, Israel;2. The Academic College of Tel‐Aviv – Yaffo, Israel
Abstract:We study the problem of reconstructing a low‐rank matrix, where the input is an n × m matrix M over a field urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0001 and the goal is to reconstruct a (near‐optimal) matrix urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0002 that is low‐rank and close to M under some distance function Δ. Furthermore, the reconstruction must be local, i.e., provides access to any desired entry of urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0003 by reading only a few entries of the input M (ideally, independent of the matrix dimensions n and m). Our formulation of this problem is inspired by the local reconstruction framework of Saks and Seshadhri (SICOMP, 2010). Our main result is a local reconstruction algorithm for the case where Δ is the normalized Hamming distance (between matrices). Given M that is urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0004‐close to a matrix of rank urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0005 (together with d and urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0006), this algorithm computes with high probability a rank‐d matrix urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0007 that is urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0008‐close to M. This is a local algorithm that proceeds in two phases. The preprocessing phase reads only urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0009 random entries of M, and stores a small data structure. The query phase deterministically outputs a desired entry urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0010 by reading only the data structure and 2d additional entries of M. We also consider local reconstruction in an easier setting, where the algorithm can read an entire matrix column in a single operation. When Δ is the normalized Hamming distance between vectors, we derive an algorithm that runs in polynomial time by applying our main result for matrix reconstruction. For comparison, when Δ is the truncated Euclidean distance and urn:x-wiley:10429832:media:rsa20720:rsa20720-math-0011, we analyze sampling algorithms by using statistical learning tools. A preliminary version of this paper appears appears in ECCC, see: http://eccc.hpi-web.de/report/2015/128/ © 2017 Wiley Periodicals, Inc. Random Struct. Alg., 51, 607–630, 2017
Keywords:sublinear‐time algorithms  local reconstruction  low‐rank matrix reconstruction  matrix rigidity  subspace approximation
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