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首页> 外文期刊>Journal of statistical computation and simulation >Bootstrapped inference for variance parameters, measures of heterogeneity and random effects in multilevel logistic regression models
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Bootstrapped inference for variance parameters, measures of heterogeneity and random effects in multilevel logistic regression models

机译:引导推论方差参数,多级逻辑回归模型中的异质性和随机效果的措施

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摘要

We used Monte Carlo simulations to assess the performance of three bootstrap procedures for use with multilevel data (the parametric bootstrap, the residuals bootstrap, and the nonparametric bootstrap) for estimating the sampling variation of three measures of cluster variation and heterogeneity when using a multilevel logistic regression model: the variance of the distribution of the random effects, the variance partition coefficient (equivalent here to the intraclass correlation coefficient), and the median odds ratio. We also described a novel parametric bootstrap procedure to estimate the standard errors of the predicted cluster-specific random effects. Our results suggest that the parametric and residuals bootstrap should, in general, be used to estimate the sampling variation of key measures of cluster variation and heterogeneity. The performance of the novel parametric bootstrap procedure for estimating the standard errors of predicted cluster-specific random effects tended to exceed that of the model-based estimates.
机译:我们使用Monte Carlo模拟来评估三种自动启动程序的性能,用于多级数据(参数举动机,残差引导和非参数单引导程序),用于估计多级逻辑时三种群集变化和异质性测量的采样变化回归模型:随机效应分布的方差,方差分区系数(当前到腹部相关系数),以及中值差距。我们还描述了一种新颖的参数训练程序,以估计预测群集特定的随机效果的标准错误。我们的研究结果表明,总接纳和残差引导了,通常用于估计集群变化和异质性的关键测量的采样变化。用于估计预测群集特定的随机效应的标准误差的新型参数引导程序的性能趋于超过基于模型的估计的标准误差。

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