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Stochastic optimization with inequality constraints using simultaneous perturbations and penalty functions

机译:具有不等式约束的随机优化,同时使用扰动和罚函数

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We present a stochastic approximation algorithm based on penalty function method and a simultaneous perturbation gradient estimate for solving stochastic optimization problems with general inequality constraints. We present a general convergence result that applies to a class of penalty functions including the quadratic penalty function, the augmented Lagrangian, and the absolute penalty function. We also establish an asymptotic normality result for the algorithm with smooth penalty functions under minor assumptions. Numerical results are given to compare the performance of the proposed algorithm with different penalty functions.
机译:我们提出一种基于罚函数法和同时扰动梯度估计的随机逼近算法,用于求解具有一般不等式约束的随机优化问题。我们提出了适用于一类惩罚函数的一般收敛结果,包括二次惩罚函数,增强拉格朗日函数和绝对惩罚函数。我们还建立了在较小假设下具有光滑罚函数的算法的渐近正态性结果。数值结果表明了该算法在不同惩罚函数下的性能。

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