Pattern Search Methods for Linearly Constrained Minimization 论文

2000SIAM Journal on Optimization引用 392
Advanced Optimization Algorithms ResearchOptimization and Variational AnalysisPoint processes and geometric inequalities

摘要

We extend pattern search methods to linearly constrained minimization. We develop a general class of feasible point pattern search algorithms and prove global convergence to a Karush--Kuhn--Tucker point. As in the case of unconstrained minimization, pattern search methods for linearly constrained problems accomplish this without explicit recourse to the gradient or the directional derivative of the objective. Key to the analysis of the algorithms is the way in which the local search patterns conform to the geometry of the boundary of the feasible region.