An outer–inner linearization method for non-convex and nondifferentiable composite regularization problems

Research output: Contribution to journalArticlepeer-review

Abstract

We propose a new outer–inner linearization method for non-convex statistical learning problems involving non-convex structural penalties and non-convex loss. Many important statistical problems fall in this category, including the robust M-estimators, generalized linear models, and different types of structured learning problems. Our method exploits the fact that many such loss and penalty functions can be represented as compositions of smooth concave functions and nonsmooth convex functions. It linearizes the outer concave functions and solves the resulting convex, but still nonsmooth, subproblems by a special alternating linearization method. We provide proof of convergence to a stationary point of the method under mild conditions. Finally, numerical examples involving non-convex structural penalties and non-convex loss functions demonstrate the efficacy and accuracy of the method.

Original languageEnglish (US)
Pages (from-to)179-202
Number of pages24
JournalJournal of Global Optimization
Volume81
Issue number1
DOIs
StatePublished - Sep 2021

All Science Journal Classification (ASJC) codes

  • Computer Science Applications
  • Control and Optimization
  • Management Science and Operations Research
  • Applied Mathematics

Keywords

  • Machine learning
  • Non-convex loss
  • Non-convex regularization
  • Nonsmooth optimization
  • Statistics

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