Department of Decision Sciences, Bocconi University, Milan, Italy.
Department of Industrial Engineering and Management Science and Engineering, Northwestern University, Evanston, IL, USA.
Risk Anal. 2016 Oct;36(10):1871-1895. doi: 10.1111/risa.12555. Epub 2016 Feb 9.
Measures of sensitivity and uncertainty have become an integral part of risk analysis. Many such measures have a conditional probabilistic structure, for which a straightforward Monte Carlo estimation procedure has a double-loop form. Recently, a more efficient single-loop procedure has been introduced, and consistency of this procedure has been demonstrated separately for particular measures, such as those based on variance, density, and information value. In this work, we give a unified proof of single-loop consistency that applies to any measure satisfying a common rationale. This proof is not only more general but invokes less restrictive assumptions than heretofore in the literature, allowing for the presence of correlations among model inputs and of categorical variables. We examine numerical convergence of such an estimator under a variety of sensitivity measures. We also examine its application to a published medical case study.
灵敏度和不确定性度量已经成为风险分析的一个组成部分。许多这样的度量具有条件概率结构,对于这些结构,直接的蒙特卡罗估计过程具有双重循环形式。最近,已经引入了一种更有效的单循环过程,并且已经分别针对特定的度量(例如基于方差、密度和信息值的度量)证明了该过程的一致性。在这项工作中,我们给出了一个统一的单循环一致性证明,该证明适用于满足共同基本原理的任何度量。这个证明不仅更具一般性,而且比文献中迄今为止的证明假设更少,允许模型输入之间存在相关性和分类变量。我们在各种灵敏度度量下检查了这种估计器的数值收敛性。我们还研究了它在一个已发表的医学案例研究中的应用。