A Spectral Bundle Method for Semidefinite Programming 论文

2000SIAM Journal on Optimization引用 433
Advanced Optimization Algorithms ResearchComplexity and Algorithms in GraphsOptimization and Variational Analysis

详细信息

发表期刊/会议
SIAM Journal on Optimization
发表日期
2000-01-01
发表年份
2000

关键词

Advanced Optimization Algorithms ResearchComplexity and Algorithms in GraphsOptimization and Variational Analysis

摘要

A central drawback of primal-dual interior point methods for semidefinite programs is their lack of ability to exploit problem structure in cost and coefficient matrices. This restricts applicability to problems of small dimension. Typically, semidefinite relaxations arising in combinatorial applications have sparse and well-structured cost and coefficient matrices of huge order. We present a method that allows us to compute acceptable approximations to the optimal solution of large problems within reasonable time. Semidefinite programming problems with constant trace on the primal feasible set are equivalent to eigenvalue optimization problems. These are convex nonsmooth programming problems and can be solved by bundle methods. We propose replacing the traditional polyhedral cutting plane model constructed from subgradient information by a semidefinite model that is tailored to eigenvalue problems. Convergence follows from the traditional approach but a proof is included for completeness. We present numerical examples demonstrating the efficiency of the approach on combinatorial examples.