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arxiv: 1401.6024 · v1 · pith:G3ZJ66SOnew · submitted 2014-01-23 · 📊 stat.ML · cs.LG

Matrix factorization with Binary Components

classification 📊 stat.ML cs.LG
keywords factorizationmatrixconstraintsadditionalgorithmapparentapplicationarora
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Motivated by an application in computational biology, we consider low-rank matrix factorization with $\{0,1\}$-constraints on one of the factors and optionally convex constraints on the second one. In addition to the non-convexity shared with other matrix factorization schemes, our problem is further complicated by a combinatorial constraint set of size $2^{m \cdot r}$, where $m$ is the dimension of the data points and $r$ the rank of the factorization. Despite apparent intractability, we provide - in the line of recent work on non-negative matrix factorization by Arora et al. (2012) - an algorithm that provably recovers the underlying factorization in the exact case with $O(m r 2^r + mnr + r^2 n)$ operations for $n$ datapoints. To obtain this result, we use theory around the Littlewood-Offord lemma from combinatorics.

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