Approximation Hardness for A Class of Sparse Optimization Problems
Author(s): Chen, Yichen; Ye, Yinyu; Wang, Mengdi
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Abstract: | In this paper, we consider three typical optimization problems with a convex loss function and a nonconvex sparse penalty or constraint. For the sparse penalized problem, we prove that finding an O(nc1dc2)-optimal solution to an n×d problem is strongly NP-hard for any c1,c2∈[0,1) such that c1+c2<1. For two constrained versions of the sparse optimization problem, we show that it is intractable to approximately compute a solution path associated with increasing values of some tuning parameter. The hardness results apply to a broad class of loss functions and sparse penalties. They suggest that one cannot even approximately solve these three problems in polynomial time, unless P = NP. |
Publication Date: | 2019 |
Electronic Publication Date: | Feb-2018 |
Citation: | Chen, Yichen, Yinyu Ye, and Mengdi Wang. "Approximation Hardness for A Class of Sparse Optimization Problems." Journal of Machine Learning Research 20, no. 38 (2019): 1-27. |
ISSN: | 1532-4435 |
Pages: | 1 - 27 |
Type of Material: | Journal Article |
Journal/Proceeding Title: | Journal of Machine Learning Research |
Version: | Final published version. This is an open access article. |
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