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Minimizing Sum of Truncated Convex Functions and Its Applications
Authors:Tzu-Ying Liu  Hui Jiang
Institution:Department of Biostatistics, University of Michigan, Ann Arbor, MI
Abstract:In this article, we study a class of problems where the sum of truncated convex functions is minimized. In statistical applications, they are commonly encountered when ?0-penalized models are fitted and usually lead to NP-Hard non-convex optimization problems. In this article, we propose a general algorithm for the global minimizer in low-dimensional settings. We also extend the algorithm to high-dimensional settings, where an approximate solution can be found efficiently. We introduce several applications where the sum of truncated convex functions is used, compare our proposed algorithm with other existing algorithms in simulation studies, and show its utility in edge-preserving image restoration on real data.
Keywords:?0 penalty  Non-convex optimization  NP-Hard  Outlier detection  signal and image restoration
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