Shapley effects for sensitivity analysis with dependent inputs: bootstrap and kriging-based algorithms

N. Benoumechiara, Kevin Elie-Dit-Cosaque
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引用次数: 29

Abstract

In global sensitivity analysis, the well-known Sobol’ sensitivity indices aim to quantify how the variance in the output of a mathematical model can be apportioned to the different variances of its input random variables. These indices are based on the functional variance decomposition and their interpretation becomes difficult in the presence of statistical dependence between the inputs. However, as there are dependencies in many application studies, this drawback enhances the development of interpretable sensitivity indices. Recently, the Shapley values that were developed in the field of cooperative games theory have been connected to global sensitivity analysis and present good properties in the presence of dependencies. Nevertheless, the available estimation methods do not always provide confidence intervals and require a large number of model evaluations. In this paper, a bootstrap resampling is implemented in existing algorithms to assess confidence intervals. We also propose to consider a metamodel in substitution of a costly numerical model. The estimation error from the Monte-Carlo sampling is combined with the metamodel error in order to have confidence intervals on the Shapley effects. Furthermore, we compare the Shapley effects with existing extensions of the Sobol’ indices in different examples of dependent random variables.
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依赖输入敏感性分析的沙普利效应:自举和基于克里格的算法
在全局敏感性分析中,著名的Sobol敏感性指数旨在量化数学模型输出的方差如何分配给其输入随机变量的不同方差。这些指标是基于函数方差分解的,在输入之间存在统计依赖性的情况下,它们的解释变得困难。然而,由于在许多应用研究中存在依赖性,这一缺陷促进了可解释敏感性指标的发展。近年来,在合作博弈理论领域中发展起来的Shapley值与全局敏感性分析相联系,并在存在依赖关系时表现出良好的性质。然而,可用的估计方法并不总是提供置信区间,并且需要大量的模型评估。在本文中,在现有算法中实现了自举重采样来评估置信区间。我们还建议考虑用元模型来代替昂贵的数值模型。将蒙特卡罗抽样的估计误差与元模型误差相结合,以便对沙普利效应有置信区间。此外,我们比较了Shapley效应与Sobol指数的现有扩展在不同的依赖随机变量的例子。
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