Exploiting sparsity in linear and nonlinear matrix inequalities via positive semidefinite matrix completion

نویسندگان

  • Sunyoung Kim
  • Masakazu Kojima
  • Martin Mevissen
  • Makoto Yamashita
چکیده

Abstract A basic framework for exploiting sparsity via positive semidefinite matrix completion is presented for an optimization problem with linear and nonlinear matrix inequalities. The sparsity, characterized with a chordal graph structure, can be detected in the variable matrix or in a linear or nonlinear matrix-inequality constraint of the problem. We classify the sparsity in two types, the domain-space sparsity (d-space sparsity) for the symmetric matrix variable in the objective and/or constraint functions of the problem, which is required to be positive semidefinite, and the range-space sparsity (r-space sparsity) for a linear or nonlinear matrix-inequality constraint of the problem. Four conversion methods are proposed in this framework: two for exploiting the d-space sparsity and the other two for exploiting the r-space sparsity. When applied

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عنوان ژورنال:
  • Math. Program.

دوره 129  شماره 

صفحات  -

تاریخ انتشار 2011