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Interior-Point Algorithms for Semidefinite Programming Based on a Nonlinear Formulation
Authors:Samuel Burer  Renato D.C. Monteiro  Yin Zhang
Affiliation:(1) Department of Management Sciences, University of Iowa, Iowa City, IA 52242, USA;(2) School of ISyE, Georgia Tech., Atlanta, Georgia 30332, USA;(3) Department of Computational and Applied Mathematics, Rice University, Houston, Texas 77005, USA
Abstract:Recently in Burer et al. (Mathematical Programming A, submitted), the authors of this paper introduced a nonlinear transformation to convert the positive definiteness constraint on an n × n matrix-valued function of a certain form into the positivity constraint on n scalar variables while keeping the number of variables unchanged. Based on this transformation, they proposed a first-order interior-point algorithm for solving a special class of linear semidefinite programs. In this paper, we extend this approach and apply the transformation to general linear semidefinite programs, producing nonlinear programs that have not only the n positivity constraints, but also n additional nonlinear inequality constraints. Despite this complication, the transformed problems still retain most of the desirable properties. We propose first-order and second-order interior-point algorithms for this type of nonlinear program and establish their global convergence. Computational results demonstrating the effectiveness of the first-order method are also presented.
Keywords:semidefinite program  semidefinite relaxation  nonlinear programming  interior-point methods
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