在R中使用lmeresampler引导聚类数据

R J. Pub Date : 2021-06-11 DOI:10.32614/rj-2023-015
A. Loy, J. Korobova
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引用次数: 3

摘要

线性混合效应模型通常用于分析聚类数据结构。在R中有许多包可以拟合这些模型并进行基于似然的推断。基于重采样的推理程序的实现更加有限。在本文中,我们介绍了lmeresampler包,用于引导通过lme4或nlme拟合的嵌套线性混合效应模型。自举估计允许偏差校正,调整标准误差和小样本量的置信区间,当分布假设打破。我们还将说明如何使用自举重新采样来诊断这类模型。此外,该方法使模型参数函数的区间估计易于构造。
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Bootstrapping Clustered Data in R using lmeresampler
Linear mixed-effects models are commonly used to analyze clustered data structures. There are numerous packages to fit these models in R and conduct likelihood-based inference. The implementation of resampling-based procedures for inference are more limited. In this paper, we introduce the lmeresampler package for bootstrapping nested linear mixed-effects models fit via lme4 or nlme. Bootstrap estimation allows for bias correction, adjusted standard errors and confidence intervals for small samples sizes and when distributional assumptions break down. We will also illustrate how bootstrap resampling can be used to diagnose this model class. In addition, lmeresampler makes it easy to construct interval estimates of functions of model parameters.
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