多元校准中多用途置信区域的比较

M. Chvosteková
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引用次数: 0

摘要

本文的多元校正问题是通过多元线性模型,构建与解释变量相关的多元正态分布响应变量的一系列值对应的解释变量未知值的多用途置信区域。要求所构建的多用途置信区域中至少有γ包含具有置信度1 - α的解释变量的对应真值。我们对Mathew和Zha(1997)基于解释变量未知值的经典估计量导出的多用途置信区域与根据置信水平和大小反转容差区域构建的多用途置信区域进行了数值比较。虽然在我们的比较研究中,所提出的多用途置信区域的估计置信度令人满意地接近规定水平,但Mathew和Zha(1997)推导的保守多用途置信区域在我们研究中所有考虑的情况下都更窄,我们推荐它们用于多变量校准任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Multiple-Use Confidence Regions for Multivariate Calibration
Multivariate calibration problem in this paper deals with the construction of multiple use confidence regions for unknown values of an explanatory variable corresponding to a sequence of values of a multivariate normally distributed response variable, related to the explanatory variable through a multivariate linear model. It is required that at least γ of the constructed multiple use confidence regions will contain the corresponding true value of the explanatory variable with confidence 1 - α. We provide a numerical comparison of the multiple use confidence regions derived by Mathew and Zha (1997), based on the classical estimator for the unknown value of the explanatory variable, and the proposed multiple-use confidence regions constructed by inverting a tolerance region according to the confidence level and the size. Although the estimated confidence of the proposed multiple-use confidence regions is satisfactorily close to the prescribed level in our comparison study, the conservative multiple use confidence regions derived by Mathew and Zha (1997) are narrower in all considered cases in our study and we recommend them for the multivariate calibration task.
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