Sensitivity analysis helps identify which model inputs convey the most uncertainty to the model output. One of the most authoritative measures in global sensitivity analysis is the Sobol' total-order index, which can be computed with several different estimators. Although previous comparisons exist, it is hard to know which estimator performs best since the results are contingent on the benchmark setting defined by the analyst (the sampling method, the distribution of the model inputs, the number of model runs, the test function or model and its dimensionality, the weight of higher order effects or the performance measure selected). Here we compare several total-order estimators in an eight-dimension hypercube where these benchmark parameters are treated as random parameters. This arrangement significantly relaxes the dependency of the results on the benchmark design. We observe that the most accurate estimators are Razavi and Gupta's, Jansen's or Janon/Monod's for factor prioritization, and Jansen's, Janon/Monod's or Azzini and Rosati's for approaching the "true" total-order indices. The rest lag considerably behind. Our work helps analysts navigate the myriad of total-order formulae by reducing the uncertainty in the selection of the most appropriate estimator.
翻译:感官分析有助于确定哪些模型输入能给模型输出带来最大的不确定性。全球敏感度分析中最权威的措施之一是Sobol的全序指数,该指数可以用若干不同的估计参数来计算。虽然以前存在比较,但很难知道哪个估计器表现最佳,因为其结果取决于分析员确定的基准(抽样方法、模型输入的分布、模型输入的数量、模型运行次数、测试功能或模型及其维度、较高顺序效应或所选性能的重量),这里我们比较了八分位超立方的全序估计器,这些基准参数被视为随机参数。这种安排大大减轻了基准设计对结果的依赖。我们发现,最准确的估算器是Razavi和Gupta、Jansen或Janon/Monod的系数排序,Jansen的运行、Janson/Monod或Azzini和Rosati的参数,以接近“正弦”全序指数。最接近的“全序”指数,而最落后的后方位是精确的公式。我们的工作有助于以最适当的公式来分析。