Low-Rank Binary Matrix Approximation in Column-Sum Norm

Abstract

We consider 1\ell_1-Rank-rr Approximation over GF(2), where for a binary m×nm\times n matrix A{\bf A} and a positive integer rr, one seeks a binary matrix B{\bf B} of rank at most rr, minimizing the column-sum norm AB1||{\bf A} -{\bf B}||_1. We show that for every ε(0,1)\varepsilon\in (0, 1), there is a randomized (1+ε)(1+\varepsilon)-approximation algorithm for 1\ell_1-Rank-rr Approximation over GF(2) of running time mO(1)nO(24rε4)m^{O(1)}n^{O(2^{4r}\cdot \varepsilon^{-4})}. This is the first polynomial time approximation scheme (PTAS) for this problem

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