用改进的限制极大似然估计量进行协方差分析中序约束下的统计推断。

Sankhya. Series B. [Methodological.] Pub Date : 2009-01-01
Joshua Betcher, Shyamal D Peddada
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引用次数: 0

摘要

在本文中,我们引入了一种新的方法来估计不受限制的最大似然估计量(UMLE)是多元正态分布且已知协方差矩阵时,在不等式约束下(称为序约束)总体参数的估计。此外,提出了一种Dunnett-type检验程序及其相应的同步置信区间,用于在序约束下对总体参数的基本对比进行推断。提出的方法是由协方差模型分析中遇到的估计和测试问题驱动的。众所周知,限制极大似然估计(RMLE)在某些二次损失条件下可能表现不佳。例如,当UMLE服从多元正态分布,均值满足简单树序限制,且总体均值向量维数较大时。我们分析研究了所提出的估计器的性能,并使用计算机模拟,发现所提出的方法在RMLE失败的情况下不会失败。我们通过重新分析最近发表的大鼠子宫营养生物测定数据来说明所提出的方法。
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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Statistical inference under order restrictions in analysis of covariance using a modified restricted maximum likelihood estimator.

In this article we introduce a new procedure for estimating population parameters under inequality constraints (known as order restrictions) when the unrestricted maximum liklelihood estimator (UMLE) is multivariate normally distributed with a known covariance matrix. Furthermore, a Dunnett-type test procedure along with the corresponding simultaneous confidence intervals are proposed for drawing inferences on elementary contrasts of population parameters under order restrictions. The proposed methodology is motivated by estimation and testing problems encountered in the analysis of covariance models. It is well-known that the restricted maximum likelihood estimator (RMLE) may perform poorly under certain conditions in terms of quadratic loss. For example, when the UMLE is distributed according to multivariate normal distribution with means satisfying simple tree order restriction and the dimension of the population mean vector is large. We investigate the performance of the proposed estimator analytically as well as using computer simulations and discover that the proposed method does not fail in the situations where RMLE fails. We illustrate the proposed methodology by re-analyzing a recently published rat uterotrophic bioassay data.

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