Kernel-based sensitivity indices for any model behavior and screening

M. Lamboni
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Abstract

Complex models are often used to understand interactions and drivers of human-induced and/or natural phenomena. It is worth identifying the input variables that drive the model output(s) in a given domain and/or govern specific model behaviors such as contextual indicators based on socioenvironmental models. Using the theory of multivariate weighted distributions to characterize specific model behaviors, we propose new measures of association between inputs and such behaviors. Our measures rely on sensitivity functionals (SFs) and kernel methods, including variance-based sensitivity analysis. The proposed ℓ1-based kernel indices account for interactions among inputs, higher-order moments of SFs, and their upper bounds are somehow equivalent to the Morris-type screening measures, including dependent elementary effects. Empirical kernel-based indices are derived, including their statistical properties for the computational issues, and numerical results are provided.
任何模型行为和筛选的基于核的灵敏度指数
复杂的模型通常用于了解人类引起的和/或自然现象的相互作用和驱动因素。值得确定的是,在特定领域中驱动模型输出和/或支配特定模型行为(如基于社会环境模型的背景指标)的输入变量。利用多元加权分布理论来描述特定的模型行为,我们提出了输入与此类行为之间关联的新测量方法。我们的测量方法依赖于灵敏度函数(SF)和核方法,包括基于方差的灵敏度分析。所提出的基于 ℓ1 的核指数考虑了输入、SF 的高阶矩之间的相互作用,其上限在某种程度上等同于莫里斯型筛选测量,包括依赖性基本效应。我们还推导出了基于内核的经验指数,包括它们在计算问题上的统计特性,并提供了数值结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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