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Multivariate sensitivity analysis: Minimum variance unbiased estimators of the first-order and total-effect covariance matrices

机译:多变量敏感性分析:第一阶和总效应协方差矩阵的最小方差不偏的估计

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摘要

In uncertainty quantification, multivariate sensitivity analysis (MSA) extends variance-based sensitivity analysis to cope with the multivariate response, and it aims to apportion the variability of the multivariate response into input factors and their interactions. The first-order and total-effect covariance matrices from MSA, which assess the effects of input factors, provide useful information about interactions among input factors, the order of interactions, and the magnitude of interactions over all model outputs. In this paper, first, we propose and study generalized sensitivity indices (GSIs) using the first-order and total-effect covariance matrices. The new GSIs make use of matrix norms when partial orders such as the Loewner ordering on covariance matrices is not possible, and we obtain the classical GSIs using the Frobenius norm. Second, we propose minimum variance unbiased estimators (MVUEs) of the first-order and total-effect covariance matrices, and third, we provide an efficient estimator of the first-order and total (classical) GSIs. We also derive the consistency, the asymptotic normality, and the asymptotic confidence regions of these estimators. Our estimator allows for improving the GSIs estimates.
机译:在不确定的定量中,多变量敏感性分析(MSA)扩展了基于方差的敏感性分析以应对多变量响应,并旨在分配多变量响应变为输入因子及其相互作用的可变性。来自MSA的一阶和总效应协方差矩阵评估输入因素的影响,提供有关输入因素,交互顺序和所有模型输出的交互之间的有用信息。在本文中,首先,我们使用一阶和总效应协方差矩阵提出和研究广义敏感指数(GSIS)。当不可能使用诸如协方差矩阵上的Loewner排序之类的部分订单时,新的GSIS利用矩阵规范,我们使用Frobenius Norm获取经典GSIS。其次,我们提出了一阶和总效应协方差矩阵的最小差异无偏见估计(MVUES),以及第三,我们提供了一阶和总(古典)GSI的有效估计器。我们还导出了这些估算者的一致性,渐近常态和渐近置信区。我们的估算器允许改善GSIS估计。

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