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Parameterization of multivariate random effects models for categorical data.

机译:分类数据的多元随机效应模型的参数化。

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摘要

Alternative parameterizations and problems of identification and estimation of multivariate random effects models for categorical responses are investigated. The issues are illustrated in the context of the multivariate binomial logit-normal (BLN) model introduced by Coull and Agresti (2000, Biometrics 56, 73-80). We demonstrate that the BLN model is poorly identified unless proper restrictions are imposed on the parameters. Moreover, estimation of BLN models is unduly computationally complex. In the first application considered by Coull and Agresti, an identification problem results in highly unstable, highly correlated parameter estimates and large standard errors. A probit-normal version of the specified BLN model is demonstrated to be underidentified, whereas the BLN model is empirically underidentified. Identification can be achieved by constraining one of the parameters. We show that a one-factor probit model is equivalent to the probit version of the specified BLN model and that a one-factor logit model is empirically equivalent to the BLN model. Estimation is greatly simplified by using a factor model.
机译:研究了分类响应的替代参数化以及识别和估计多元随机效应模型的问题。这些问题在Coull和Agresti(2000,Biometrics 56,73-80)引入的多元二项式对数正态(BLN)模型的背景下得到了说明。我们证明,除非对参数施加适当的限制,否则BLN模型很难识别。此外,BLN模型的估计在计算上过于复杂。在Coull和Agresti考虑的第一个应用中,识别问题导致高度不稳定,高度相关的参数估计和大标准误差。事实证明,指定的BLN模型的概率标准版本未充分确定,而BLN模型在经验上未充分确定。可以通过限制参数之一来实现识别。我们表明,单因素概率模型等同于指定的BLN模型的概率模型,单因素logit模型在经验上等同于BLN模型。使用因子模型可以大大简化估算。

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