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Sensitivity analysis approaches to high-dimensional screening problems at low sample size

机译:低样本量的高灵敏度筛查问题的灵敏度分析方法

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摘要

Sensitivity analysis is an essential tool in the development of robust models for engineering, physical sciences, economics and policy-making, but typically requires running the model a large number of times in order to estimate sensitivity measures. While statistical emulators allow sensitivity analysis even on complex models, they only perform well with a moderately low number of model inputs: in higher dimensional problems they tend to require a restrictively high number of model runs unless the model is relatively linear. Therefore, an open question is how to tackle sensitivity problems in higher dimensionalities, at very low sample sizes. This article examines the relative performance of four sampling-based measures which can be used in such high-dimensional nonlinear problems. The measures tested are the Sobol' total sensitivity indices, the absolute mean of elementary effects, a derivative-based global sensitivity measure, and a modified derivative-based measure. Performance is assessed in a screening' context, by assessing the ability of each measure to identify influential and non-influential inputs on a wide variety of test functions at different dimensionalities. The results show that the best-performing measure in the screening context is dependent on the model or function, but derivative-based measures have a significant potential at low sample sizes that is currently not widely recognised.
机译:灵敏度分析是开发用于工程,物理科学,经济学和政策制定的稳健模型的重要工具,但通常需要运行该模型多次才能估算灵敏度指标。尽管统计仿真器即使在复杂的模型上也可以进行灵敏度分析,但它们仅在模型输入数量较少的情况下才能表现良好:在高维问题中,除非模型相对线性,否则它们往往需要有限数量的模型运行。因此,一个悬而未决的问题是如何在非常小的样本量下解决更高维度的灵敏度问题。本文研究了可用于此类高维非线性问题的四种基于采样的度量的相对性能。所测试的度量是Sobol的总敏感性指数,基本效应的绝对平均值,基于导数的全局敏感性度量和基于修正的基于导数的度量。在评估的背景下,通过评估每种措施在不同维度上的各种测试功能上识别有影响和无影响的输入的能力来评估性能。结果表明,筛选条件下表现最佳的度量取决于模型或功能,但基于导数的度量在低样本量下具有巨大潜力,目前尚未得到广泛认可。

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