Authors
Chao Qian, Yang Yu, Zhi-Hua Zhou
Publication date
2015
Journal
Advances in neural information processing systems
Volume
28
Description
Selecting the optimal subset from a large set of variables is a fundamental problem in various learning tasks such as feature selection, sparse regression, dictionary learning, etc. In this paper, we propose the POSS approach which employs evolutionary Pareto optimization to find a small-sized subset with good performance. We prove that for sparse regression, POSS is able to achieve the best-so-far theoretically guaranteed approximation performance efficiently. Particularly, for the\emph {Exponential Decay} subclass, POSS is proven to achieve an optimal solution. Empirical study verifies the theoretical results, and exhibits the superior performance of POSS to greedy and convex relaxation methods.
Total citations
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Scholar articles
C Qian, Y Yu, ZH Zhou - Advances in neural information processing systems, 2015