An Interior Method for Nonconvex Semidefinite Programs

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作者
Florian Jarre
机构
[1] Universität Düsseldorf,Institut für Mathematik
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关键词
nonlinear optimization; semidefinite program; predictor corrector method; trust region method;
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摘要
In several applications, semidefinite programs arise in which the matrix depends nonlinearly on the unknown variables. We propose a new solution method for such semidefinite programs that also applies to other smooth nonconvex programs. The method is an extension of a primal predictor corrector interior method to nonconvex programs. The predictor steps are based on Dikin ellipsoids of a “convexified” domain. The corrector steps are based on quadratic subprograms that combine aspects of line search and trust region methods. Convergence results are given, and some preliminary numerical experiments suggest a high robustness of the proposed method.
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页码:347 / 372
页数:25
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