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Sensitivity Analysis and Estimation of Extreme Tail Behavior in Two-Dimensional Monte Carlo Simulation

机译:二维蒙特卡洛模拟中的极端尾部行为敏感性分析和估计

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Two-dimensional Monte Carlo simulation is frequently used to implement probabilistic risk models, as it allows for uncertainty and variability to be quantified separately. In many cases, we are interested in the proportion of individuals from a variable population exceeding a critical threshold, together with uncertainty about this proportion. In this article we introduce a new method that can accurately estimate these quantities much more efficiently than conventional algorithms. We also show how those model parameters having the greatest impact on the probabilities of rare events can be quickly identified via this method. The algorithm combines elements from well-established statistical techniques in extreme value theory and Bayesian analysis of computer models. We demonstrate the practical application of these methods with a simple example, in which the true distributions are known exactly, and also with a more realistic model of microbial contamination of milk with seven parameters. For the latter, sensitivity analysis (SA) is shown to identify the two inputs explaining the majority of variation in distribution tail behavior. In the subsequent prediction of probabilities of large contamination events, similar results are obtained using the new approach taking 43 seconds or the conventional simulation that requires more than 3 days.
机译:二维蒙特卡洛模拟经常用于实现概率风险模型,因为它允许分别量化不确定性和可变性。在许多情况下,我们对可变人口中超过临界阈值的个人比例以及该比例的不确定性感兴趣。在本文中,我们介绍了一种新方法,该方法可以比常规算法更有效地准确估计这些量。我们还展示了如何通过此方法快速识别对稀有事件的概率具有最大影响的那些模型参数。该算法结合了极值理论和计算机模型的贝叶斯分析中成熟的统计技术的要素。我们通过一个简单的示例演示了这些方法的实际应用,在该示例中,准确地知道了真实的分布,并且还使用了七个参数更真实的牛奶微生物污染模型。对于后者,显示了灵敏度分析(SA)以识别两个输入,从而解释了分布尾部行为的大部分变化。在随后的大污染事件概率预测中,使用新方法花费43秒或需要3天以上的常规模拟才能获得相似的结果。

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