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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >On the Positive Definiteness of the Information Matrix Under the Binary and Poisson Mixed Models
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On the Positive Definiteness of the Information Matrix Under the Binary and Poisson Mixed Models

机译:二元和泊松混合模型下信息矩阵的正定性

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摘要

Binary and Poisson generalized linear mixed models are used to analyse over/under-dispersed proportion and count data, respectively. As the positive definiteness of the information matrix is a required property for valid inference about the fixed regression vector and the variance components of the random effects, this paper derives the relevant necessary and sufficient conditions under both these models. It is found that the conditions for the positive definiteness are not identical for these two nonlinear mixed models and that a mere analogy with the usual linear mixed model does not dictate these conditions.
机译:Binary和Poisson广义线性混合模型分别用于分析高/低分散比例和计数数据。由于信息矩阵的正定性是对固定回归向量和随机效应的方差分量进行有效推断的必要属性,因此本文推导了这两种模型下的相关必要条件和充分条件。发现对于这两个非线性混合模型,正定性的条件并不相同,仅与通常的线性混合模型进行类比并不能决定这些条件。

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