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arxiv: 1509.09236 · v3 · pith:TOC5P6EGnew · submitted 2015-09-30 · 💻 cs.LG · cs.CC· math.NA· math.OC

On the Complexity of Robust PCA and ell₁-norm Low-Rank Matrix Approximation

classification 💻 cs.LG cs.CCmath.NAmath.OC
keywords matrixrobustlow-ranknormnp-hardproblemapproximationprove
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The low-rank matrix approximation problem with respect to the component-wise $\ell_1$-norm ($\ell_1$-LRA), which is closely related to robust principal component analysis (PCA), has become a very popular tool in data mining and machine learning. Robust PCA aims at recovering a low-rank matrix that was perturbed with sparse noise, with applications for example in foreground-background video separation. Although $\ell_1$-LRA is strongly believed to be NP-hard, there is, to the best of our knowledge, no formal proof of this fact. In this paper, we prove that $\ell_1$-LRA is NP-hard, already in the rank-one case, using a reduction from MAX CUT. Our derivations draw interesting connections between $\ell_1$-LRA and several other well-known problems, namely, robust PCA, $\ell_0$-LRA, binary matrix factorization, a particular densest bipartite subgraph problem, the computation of the cut norm of $\{-1,+1\}$ matrices, and the discrete basis problem, which we all prove to be NP-hard.

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