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Mean and Variance Modeling of Under-Dispersed and Over-Dispersed Grouped Binary Data

机译:分散不足和分散过度的二进制数据的均值和方差建模

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This article describes the R package BinaryEPPM and its use in determining maximum likelihood estimates of the parameters of extended Poisson process models for grouped binary data. These provide a Poisson process family of flexible models that can handle unlimited under-dispersion but limited over-dispersion in such data, with the binomial distribution being a special case. Within BinaryEPPM, models with the mean and variance related to covariates are constructed to match a generalized linear model formulation. Combining such under-dispersed models with standard over-dispersed models such as the beta binomial distribution provides a very general form of residual distribution for modeling grouped binary data. Use of the package is illustrated by application to several data-sets.
机译:本文介绍了R程序包BinaryEPPM及其在确定分组二进制数据的扩展Poisson过程模型的参数的最大似然估计中的使用。这些提供了Poisson过程系列的灵活模型,该模型可以处理此类数据中无限的欠分散但有限的过度分散,其中二项式分布是一种特殊情况。在BinaryEPPM中,构建具有均值和方差与协变量相关的模型,以匹配广义线性模型公式。将此类欠分散模型与标准的超分散模型(例如β二项分布)结合起来,可以为建模分组的二进制数据提供一种非常通用的残差分布形式。通过应用到多个数据集来说明该包的使用。

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