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A new hybrid stochastic approximation algorithm

机译:一种新的混合随机逼近算法

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In this paper, we consider optimizing the performance of a stochastic system that is too complex for theoretical analysis to be possible, but can be evaluated by using simulation or direct experimentation. To optimize the expected performance of such system as a function of several input parameters, we propose a hybrid stochastic approximation algorithm for finding the root of the gradient of the response function. At each iteration of the hybrid algorithm, alternatively, either an average of two independent noisy negative gradient directions or a scaled noisy negative gradient direction is selected. The almost sure convergence of the hybrid algorithm is established. Numerical comparisons of the hybrid algorithm with two other existing algorithms in a simple queueing system and five nonlinear unconstrained stochastic optimization problems show the advantage of the hybrid algorithm.
机译:在本文中,我们考虑优化随机系统的性能,这种性能对于理论分析来说太复杂了,但是可以通过仿真或直接实验进行评估。为了优化作为几个输入参数函数的此类系统的预期性能,我们提出了一种混合随机近似算法,用于找到响应函数梯度的根。备选地,在混合算法的每次迭代中,选择两个独立的噪声负梯度方向的平均值或缩放的噪声负梯度方向。建立了混合算法的几乎确定的收敛性。在一个简单的排队系统中,将混合算法与其他两个现有算法进行数值比较,并且对五个非线性无约束随机优化问题进行了数值比较,证明了混合算法的优势。

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