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arxiv: 1312.4719 · v1 · pith:PMFF2KASnew · submitted 2013-12-17 · 📊 stat.ML

The Bernstein Function: A Unifying Framework of Nonconvex Penalization in Sparse Estimation

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keywords bernsteinfunctionnonconvexsparsealgorithmconcaveconjugateestimation
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In this paper we study nonconvex penalization using Bernstein functions. Since the Bernstein function is concave and nonsmooth at the origin, it can induce a class of nonconvex functions for high-dimensional sparse estimation problems. We derive a threshold function based on the Bernstein penalty and give its mathematical properties in sparsity modeling. We show that a coordinate descent algorithm is especially appropriate for penalized regression problems with the Bernstein penalty. Additionally, we prove that the Bernstein function can be defined as the concave conjugate of a $\varphi$-divergence and develop a conjugate maximization algorithm for finding the sparse solution. Finally, we particularly exemplify a family of Bernstein nonconvex penalties based on a generalized Gamma measure and conduct empirical analysis for this family.

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