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Modelling multivariate, overdispersed binomial data with additive and multiplicative random effects

机译:使用加性和乘性随机效应对多元,过度分散的二项式数据进行建模

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When modelling multivariate binomial data, it often occurs that it is necessary to take into consideration both clustering and overdispersion, the former arising from the dependence between data, and the latter due to the additional variability in the data not prescribed by the distribution. If interest lies in accommodating both phenomena at the same time, we can use separate sets of random effects that capture the within-cluster association and the extra variability. In particular, the random effects for overdispersion can be included in the model either additively or multiplicatively. For this purpose, we propose a series of Bayesian hierarchical models that deal simultaneously with both phenomena. The proposed models are applied to bivariate repeated prevalence data for hepatitis C virus (HCV) and human immunodeficiency virus (HIV) infection in injecting drug users in Italy from 1998 to 2007.
机译:在对多元二项式数据进行建模时,经常会出现这样的情况:有必要同时考虑聚类和过度分散,前者是由于数据之间的依赖性而引起的,后者是由于数据中未由分布指定的其他可变性。如果有兴趣同时容纳这两种现象,则可以使用单独的随机效应集来捕获集群内关联和额外的可变性。特别地,过度分散的随机效应可以累加或相乘地包括在模型中。为此,我们提出了一系列同时处理这两种现象的贝叶斯层次模型。拟议中的模型应用于1998年至2007年意大利注射吸毒者的丙型肝炎病毒(HCV)和人类免疫缺陷病毒(HIV)感染的双变量重复患病率数据。

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