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Use of posterior predictive assessments to evaluate model fit in multilevel logistic regression

机译:使用后验预测评估来评估多层次Logistic回归中的模型拟合

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摘要

Assessing the fit of a model is an important final step in any statistical analysis, but this is not straightforward when complex discrete response models are used. Cross validation and posterior predictions have been suggested as methods to aid model criticism. In this paper a comparison is made between four methods of model predictive assessment in the context of a three level logistic regression model for clinical mastitis in dairy cattle; cross validation, a prediction using the full posterior predictive distribution and two “mixed” predictive methods that incorporate higher level random effects simulated from the underlying model distribution. Cross validation is considered a gold standard method but is computationally intensive and thus a comparison is made between posterior predictive assessments and cross validation. The analyses revealed that mixed prediction methods produced results close to cross validation whilst the full posterior predictive assessment gave predictions that were over-optimistic (closer to the observed disease rates) compared with cross validation. A mixed prediction method that simulated random effects from both higher levels was best at identifying the outlying level two (farm-year) units of interest. It is concluded that this mixed prediction method, simulating random effects from both higher levels, is straightforward and may be of value in model criticism of multilevel logistic regression, a technique commonly used for animal health data with a hierarchical structure.
机译:在任何统计分析中,评估模型的拟合度都是重要的最后一步,但这在使用复杂的离散响应模型时并不容易。交叉验证和后验预测已被建议作为辅助模型批评的方法。本文在奶牛临床乳腺炎的三级逻辑回归模型的背景下,对四种模型预测评估方法进行了比较。交叉验证,使用完整后验预测分布的预测和两种“混合”预测方法,这些方法结合了从基础模型分布模拟的更高级别的随机效应。交叉验证被认为是黄金标准方法,但是计算量大,因此在后验预测评估和交叉验证之间进行了比较。分析显示,混合预测方法产生的结果接近交叉验证,而完整的后验预测评估给出的预测与交叉验证相比过于乐观(接近观察到的疾病发生率)。一种模拟来自两个较高级别的随机效应的混合预测方法,最适合于确定两个(农场-年)感兴趣的外围级别。结论是,这种混合预测方法可以模拟两个较高级别的随机效应,非常简单,并且可能在模型批评多级逻辑回归中具有价值,该逻辑回归通常用于具有层次结构的动物健康数据。

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