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Performance of Mixed Effects for Clustered Binary Data Models

机译:集群二进制数据模型的混合效果性能

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Clustered binary responses are very common in many practical applications, as binary data are naturally grouped by sampling techniques or some property of the sampling units. Clusters may be balanced, which means they have an equal number of observations, or they may be unbalanced. Mixed effects models are appropriate in practice since, the random effects account for the variation across clusters. When using mixed effects models for clustered data with binary outcomes, a preferred model is the Hierarchical Generalized Linear Model (HGLM). This article compares the performance of Restricted Pseudo Likelihood estimation (RPL) of the mixed effects clustered binary data models with equal and unequal cluster sizes. This was evaluated in terms of Type I error rate, power, and standard error through computer simulation. The simulation is performed by using different numbers of clusters and different cluster sizes. The results show that the performance of the mixed effects clustered binary data model is similar, regardless of inequality in cluster size.
机译:在许多实际应用中,聚类二进制响应是非常常见的,因为二进制数据通过采样技术或采样单元的某些特性自然地分组。簇可能是平衡的,这意味着它们具有相同数量的观察,或者它们可能不平衡。混合效果模型在实践中是合适的,因为随机效应占跨群集的变化。使用具有二进制结果的聚类数据的混合效果模型时,优选的模型是分层广义线性模型(HGLM)。本文比较了具有相同且不等的群集大小的混合效应集群二进制数据模型的限制伪似然估计(RPL)的性能。通过计算机模拟,根据I型错误率,电源和标准误差来评估这一点。通过使用不同数量的簇和不同的簇大小来执行模拟。结果表明,无论集群大小的不等式如何,混合效果的性能都相似。

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