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Exact Penalization in Stochastic Programming—Calmness and Constraint Qualification

机译:随机规划中的精确惩罚-镇定和约束条件限定

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We deal with the conditions which ensure exact penalization in stochastic programming problems under finite discrete distributions. We give several sufficient conditions for problem calmness including graph calmness, existence of an error bound, and generalized Mangasarian-Fromowitz constraint qualification. We propose a new version of the theorem on asymptotic equivalence of local minimizers of chance constrained problems and problems with exact penalty objective. We apply the theory to a problem with a stochastic vanishing constraint.
机译:我们处理确保在有限离散分布下随机规划问题中精确惩罚的条件。我们为问题的镇定性提供了几个充分的条件,包括图的镇定性,错误边界的存在以及广义的Mangasarian-Fromowitz约束条件。我们提出了关于机会约束问题和具有精确惩罚目标的问题的局部极小值的渐近等价性的新版本定理。我们将该理论应用于具有随机消失约束的问题。

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