资源论文Finding a sparse vector in a subspace: Linear sparsity using alternating directions

Finding a sparse vector in a subspace: Linear sparsity using alternating directions

2020-01-19 | |  67 |   47 |   0

Abstract

We consider the problem of recovering the sparsest vector in a subspace 图片.png with dim (S) = n. This problem can be considered a homogeneous variant of the sparse recovery problem, and finds applications in sparse dictionary learning, sparse PCA, and other problems in signal processing and machine learning. Simple convex heuristics for this problem provably break down when ? the fraction of nonzero entries in the target sparse vector substantially exceeds 图片.png In contrast, we exhibit a relatively simple nonconvex approach based on alternating directions, which provably succeeds even when the fraction of nonzero entries is 图片.png. To our knowledge, this is the first practical algorithm to achieve this linear scaling. This result assumes a planted sparse model, in which the target sparse vector is embedded in an otherwise random subspace. Empirically, our proposed algorithm also succeeds in more challenging data models arising, e.g., from sparse dictionary learning.

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