Nonmonotone trust-region methods for bound-constrained semismooth equations with applications to nonlinear mixed complementarity problems

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Abstract

We develop and analyze a class of trust-region methods for bound-constrained semismooth systems of equations. The algorithm is based on a simply constrained differentiable minimization reformulation. Our global convergence results are developed in a very general setting that allows for nonmonotonicity of the function values at subsequent iterates. We propose a way of computing trial steps by a semismooth Newton-like method that is augmented by a projection onto the feasible set. Under a Dennis - Moré-type condition we prove that close to a regular solution the trust-region algorithm turns into this projected Newton method, which is shown to converge locally q-superlinearly or quadratically, respectively, depending on the quality of the approximate subdifferentials used. As an important application we discuss how the developed algorithm can be used to solve nonlinear mixed complementarity problems (MCPs). Hereby, the MCP is converted into a boundconstrained semismooth equation by means of an NCP-function. The efficiency of our algorithm is documented by numerical results for a subset of the MCPLIB problem collection.

Original languageEnglish
Pages (from-to)889-917
Number of pages29
JournalSIAM Journal on Optimization
Volume11
Issue number4
DOIs
StatePublished - Mar 2001

Keywords

  • Global convergence
  • Nonlinear mixed complementarity problem
  • Nonmonotone trust region method
  • Nonsmooth Newton method
  • Semismooth equation
  • Superlinear and quadratic convergence

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