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On the Convergence of Coderivative of SAA Solution Mapping for a Parametric Stochastic Generalized Equation

机译:参数随机广义方程SAA解映射的代码导数的收敛性

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The aim of this paper is to investigate the convergence properties for Mordukhovich's coderivative of the solution map of the sample average approximation (SAA) problem for a parametric stochastic generalized equation. It is demonstrated that, under suitable conditions, both the cosmic deviation and the rho-deviation between the coderivative of the solution mapping to SAA problem and that of the solution mapping to the parametric stochastic generalized equation converge almost surely to zero as the sample size tends to infinity. Moreover, the exponential convergence rate of coderivatives of the solution maps to the SAA parametric generalized equations is established. The results are used to develop sufficient conditions for the consistency of the Lipschitz-like property of the solution map of SAA problem and the consistency of stationary points of the SAA estimator for a stochastic mathematical program with complementarity constraints.
机译:本文的目的是研究参数随机广义方程的样本平均逼近(SAA)问题解图的Mordukhovich码导数的收敛性。结果表明,在合适的条件下,随着样本量的增加,求解SAA问题的解的代码导数和针对参数随机广义方程的解的代码导数之间的宇宙偏差和rho-偏差都几乎肯定收敛于零。到无穷远。此外,建立了解映射的代码导数到SAA参数广义方程的指数收敛速度。该结果用于为具有互补约束的随机数学程序的SAA问题的解图的Lipschitz型性质的一致性和SAA估计的平稳点的一致性提供充分的条件。

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