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Stochastic Approximation for simulation Optimization under Input Uncertainty with Streaming Data

机译:流数据输入不确定性下的模拟优化随机逼近

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摘要

We consider a simulation optimization problem whose objective function is defined as the expectation of a simulation output based on a continuous decision variable, where the parameters of the simulation input distributions are estimated based on independent and identically distributed streaming data from a real-world system. Finite-sample error in the input parameter estimates causes input uncertainty in the simulation output, which decreases as the data size increases. By viewing the problem through the lens of misspecified stochastic optimization, we develop a stochastic approximation (SA) framework to solve a sequence of problems defined by the sequence of input parameter estimates to increasing levels of exactness. Under suitable assumptions, we observe that the error in the SA solution diminishes to zero in expectation and propose a SA sampling scheme so that the resulting solution iterates converge to the optimal solution under the real-world input distribution at the best possible rate.
机译:我们考虑一种模拟优化问题,其客观函数被定义为基于连续决策变量的仿真输出的期望,其中基于来自真实世界系统的独立和相同分布的流数据估计模拟输入分布的参数。输入参数估计中的有限样本误差会导致模拟输出中的输入不确定性,随着数据大小的增加而降低。通过观察问题通过错过的随机优化镜头,我们开发了一个随机近似(SA)框架,以解决由输入参数估计序列定义的问题序列,以增加精确度。在合适的假设下,我们观察到SA解决方案中的误差会在期望中减少到零,并提出SA采样方案,使得所得解决方案以最佳速率迭代到真实世界的输入分布下的最佳解决方案。

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