On the convergence of a class of outer approximation algorithms for convex programs

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摘要

This paper presents a new class of outer approximation methods for solving general convex programs. The methods solve at each iteration a subproblem whose constraints contain the feasible set of the original problem. Moreover, the methods employ quadratic objective functions in the subproblems by adding a simple quadratic term to the objective function of the original problem, while other outer approximation methods usually use the original objective function itself throughout the iterations. By this modification, convergence of the methods can be proved under mild conditions. Furthermore, it is shown that generalized versions of the cut construction schemes in Kelley-Cheney-Goldstein's cutting plane method and Veinott's supporting hyperplane method can be incorporated with the present methods and a cut generated at each iteration need not be retained in the succeeding iterations.

论文关键词:Outer approximation algorithm,cutting plane,convex program,subgradient

论文评审过程:Received 8 September 1982, Revised 17 October 1983, Available online 10 July 2002.

论文官网地址:https://doi.org/10.1016/0377-0427(84)90051-7