Solving Large-Scale Sparse Semidefinite Programs for Combinatorial Optimization 论文

2000SIAM Journal on Optimization引用 279
Advanced Optimization Algorithms ResearchComplexity and Algorithms in GraphsSparse and Compressive Sensing Techniques

摘要

We present a dual-scaling interior-point algorithm and show how it exploits the structure and sparsity of some large-scale problems. We solve the positive semidefinite relaxation of combinatorial and quadratic optimization problems subject to boolean constraints. We report the first computational results of interior-point algorithms for approximating maximum cut semidefinite programs with dimension up to 3,000.