Publication | Closed Access
Sums of Squares and Semidefinite Program Relaxations for Polynomial Optimization Problems with Structured Sparsity
447
Citations
32
References
2006
Year
Mathematical ProgrammingEngineeringConstrained OptimizationComputational ComplexitySemidefinite ProgrammingCertain Sparse StructureStructured SparsityCombinatorial OptimizationSemidefinite Program RelaxationsApproximation TheoryComputer ScienceQuadratic ProgrammingConic OptimizationSparse RepresentationSemi-definite OptimizationSdp RelaxationsLinear ProgrammingPolynomial Optimization ProblemsConstraint Polynomials
Unconstrained and inequality constrained sparse polynomial optimization problems (POPs) are considered. A correlative sparsity pattern graph is defined to find a certain sparse structure in the objective and constraint polynomials of a POP. Based on this graph, sets of the supports for sums of squares (SOS) polynomials that lead to efficient SOS and semidefinite program (SDP) relaxations are obtained. Numerical results from various test problems are included to show the improved performance of the SOS and SDP relaxations.
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