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Fast estimation algorithm for likelihood-based analysis of repeated categorical responses

机译:基于似然分析的重复分类响应的快速估计算法

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摘要

Likelihood-based marginal regression modelling for repeated, or otherwise clustered, categorical responses is computationally demanding. This is because the number of measures needed to describe the associations within a cluster increase geometrically with increasing cluster size. The proposed estimation methods typically describe the associations using odds ratios, which result in computationally unfeasible solutions for large cluster sizes. An alternative method for joint modelling of the regression, association, and dropout mechanism for clustered categorical responses is presented. The joint distribution of a multivariate categorical response is described by utilizing the mean parameterization, which facilitates maximum likelihood estimation in two important respects.
机译:对于重复或以其他方式聚类的分类响应,基于似然性的边际回归建模在计算上要求很高。这是因为描述簇内的关联所需的度量数量随着簇大小的增加而在几何上增加。所提出的估计方法通常使用比值比来描述关联,这对于大的簇大小导致了计算上不可行的解决方案。提出了一种用于聚类分类响应的回归,关联和辍学机制的联合建模的替代方法。利用均值参数化描述多元分类响应的联合分布,这有助于在两个重要方面进行最大似然估计。

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