Applying Bayesian ideas in simulation

Sigrún Andradóttir , Vicki M Bier
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引用次数: 36

Abstract

The standard approach to analyzing the results of probabilistic simulation rests on the use of classical statistics. In this paper, we explore the use of Bayesian statistics as an alternative. This makes it possible to incorporate prior information into the analysis of simulation results in a formal and rigorous manner, through the use of prior distributions. The Bayesian approach will typically yield improved analyses, by better taking into account what is actually known and what is not known about the system to be simulated (assuming that the prior distributions themselves adequately represent this knowledge). We briefly review Bayesian methods for readers who are not familiar with this type of analysis and suggest ways in which these methods can be applied to simulation. Specifically, we explore the use of Bayesian statistics for verification and validation of simulation models and for simulation output analysis, in both cases using priors on the performance measures of interest. We then study the use of prior distributions on the input parameters to the simulation, as a way to quantify the effects of input uncertainties on both the mean and the uncertainty of the performance measures of interest, and discuss Bayesian and related methods for choosing input distributions. Finally, we briefly consider the use of a joint prior on both the input parameters and the resulting performance measures. Bayesian methods are particularly appropriate for use in practice when simulations are costly, or when input uncertainties are large. Our work provides guidance on the use of Bayesian methods for simulation analysis. We hope that it will stimulate readers to learn more about this important subject, and also encourage further research in this area.

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贝叶斯思想在仿真中的应用
分析概率模拟结果的标准方法依赖于经典统计学的使用。在本文中,我们探索使用贝叶斯统计作为一种选择。这使得通过使用先验分布,以正式和严格的方式将先验信息纳入模拟结果的分析成为可能。贝叶斯方法通常会产生改进的分析,通过更好地考虑要模拟的系统的实际已知和未知(假设先验分布本身充分代表了这些知识)。我们为不熟悉这种分析的读者简要回顾了贝叶斯方法,并提出了这些方法可以应用于模拟的方法。具体来说,我们探索了贝叶斯统计在验证和验证仿真模型以及仿真输出分析中的使用,在这两种情况下都使用了感兴趣的性能度量的先验。然后,我们研究了在模拟输入参数上使用先验分布,作为量化输入不确定性对感兴趣的性能度量的平均值和不确定性的影响的一种方式,并讨论了选择输入分布的贝叶斯和相关方法。最后,我们简要地考虑了在输入参数和结果性能度量上使用联合先验。贝叶斯方法特别适用于模拟成本高或输入不确定性大的情况下的实际应用。我们的工作为使用贝叶斯方法进行仿真分析提供了指导。我们希望它能激发读者更多地了解这一重要主题,并鼓励在这一领域的进一步研究。
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