投影算法在分解与非光滑优化中的应用

Decomposition and Nondifferentiable Optimization with the Projective Algorithm

Management Science · 1992
被引 201
人大 A+FT50UTD24ABS 4*

中文导读

提出一种基于Karmarkar投影算法的变体,结合列生成技术,用于求解非光滑最小化问题,并在凸非光滑规划测试中表现良好。

Abstract

This paper deals with an application of a variant of Karmarkar's projective algorithm for linear programming to the solution of a generic nondifferentiable minimization problem. This problem is closely related to the Dantzig-Wolfe decomposition technique used in large-scale convex programming. The proposed method is based on a column generation technique defining a sequence of primal linear programming maximization problems. Associated with each problem one defines a weighted potential function which is minimized using a variant of the projective algorithm. When a point close to the minimum of the potential function is reached, a corresponding point in the dual space is constructed, which is close to the analytic center of a polytope containing the solution set of the nondifferentiable optimization problem. An admissible cut of the polytope, corresponding to a new supporting hyperplane of the epigraph of the function to minimize, is then generated at this approximate analytic center. In the primal space this new cut translates into a new column for the associated linear programming problem. The algorithm has performed well on a set of convex nondifferentiable programming problems.

Karmarkar投影算法非光滑优化列生成