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Sample size issues in multilevel logistic regression models

机译:多级Logistic回归模型中的示例大小问题

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Educational researchers, psychologists, social, epidemiological and medical scientists are often dealing with multilevel data. Sometimes, the response variable in multilevel data is categorical in nature and needs to be analyzed through Multilevel Logistic Regression Models. The main theme of this paper is to provide guidelines for the analysts to select an appropriate sample size while fitting multilevel logistic regression models for different threshold parameters and different estimation methods. Simulation studies have been performed to obtain optimum sample size for Penalized Quasi-likelihood (PQL) and Maximum Likelihood (ML) Methods of estimation. Our results suggest that Maximum Likelihood Method performs better than Penalized Quasi-likelihood Method and requires relatively small sample under chosen conditions. To achieve sufficient accuracy of fixed and random effects under ML method, we established ‘‘50/50” and ‘‘120/50” rule respectively. On the basis our findings, a ‘‘50/60” and ‘‘120/70” rules under PQL method of estimation have also been recommended.
机译:教育研究人员,心理学家,社会,流行病学和医学科学家经常处理多级数据。有时,多级数据中的响应变量本质上是分类的,并且需要通过多级逻辑回归模型进行分析。本文的主要主题是为分析师提供指南,以选择适当的样本量,同时为不同的阈值参数和不同估计方法拟合多级逻辑回归模型。已经进行了仿真研究以获得用于惩罚的准可能性(PQL)和最大似然(ML)估计方法的最佳样品尺寸。我们的结果表明,最大似然方法比罚球的准似然方法更好地表现,并且在所选条件下需要相对较小的样品。为了在ML方法下实现固定和随机效应的足够精度,我们分别建立了''50 / 50“和”120/50“规则。在我们的调查结果的基础上,建议也建议在PQL估计方法下的“50/60”和“120/70”规则。

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