Publication | Closed Access
Algorithm 883
173
Citations
13
References
2008
Year
Numerical AnalysisMathematical ProgrammingSparse Semidefinite ProgrammingSparse RepresentationLmi RelaxationsEngineeringSemi-definite OptimizationSemidefinite ProgrammingComputer ScienceLinear ProgrammingApproximation TheorySparse Sdp RelaxationLinear Optimization
SparsePOP is a Matlab implementation of the sparse semidefinite programming (SDP) relaxation method for approximating a global optimal solution of a polynomial optimization problem (POP) proposed by Waki et al. [2006]. The sparse SDP relaxation exploits a sparse structure of polynomials in POPs when applying “a hierarchy of LMI relaxations of increasing dimensions” Lasserre [2006]. The efficiency of SparsePOP to approximate optimal solutions of POPs is thus increased, and larger-scale POPs can be handled.
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