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On the existence of maximum likelihood estimates in random effects models for clustered multivariate binary data

机译:聚类多元二元数据的随机效应模型中最大似然估计的存在

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摘要

We consider a class of random effects models for clustered multivariate binary data based on the threshold crossing technique of a latent random vector. Components of this latent vector are assumed to have a Laird–Ware structure. However, in place of their Gaussian assumptions, any specified class of multivariate distribution is allowed for the random effects, and the error vector is allowed to have any strictly positive pdf. A well known member of this class of models is the multivariate probit model with random effects. We investigate sufficient and necessary conditions for the existence of maximum likelihood estimates for the location and the association parameters. Implications of our results are illustrated through some hypothetical examples.
机译:我们考虑一类基于潜在随机向量的阈值穿越技术的聚类多元二进制数据的随机效应模型。假定此潜在向量的组件具有Laird-Ware结构。但是,代替其高斯假设,随机影响允许使用任何指定类的多元分布,并且误差向量允许具有严格严格的pdf。此类模型的一个众所周知的成员是具有随机效应的多元概率模型。我们研究了位置和关联参数的最大似然估计存在的充分必要条件。通过一些假设的例子来说明我们的结果的含义。

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