Logistic Regression with Multiple Random Effects: A Simulation Study of Estimation Methods and Statistical Packages.

IF 1.8 4区 数学 Q1 STATISTICS & PROBABILITY
Yoonsang Kim, Young-Ku Choi, Sherry Emery
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引用次数: 63

Abstract

Several statistical packages are capable of estimating generalized linear mixed models and these packages provide one or more of three estimation methods: penalized quasi-likelihood, Laplace, and Gauss-Hermite. Many studies have investigated these methods' performance for the mixed-effects logistic regression model. However, the authors focused on models with one or two random effects and assumed a simple covariance structure between them, which may not be realistic. When there are multiple correlated random effects in a model, the computation becomes intensive, and often an algorithm fails to converge. Moreover, in our analysis of smoking status and exposure to anti-tobacco advertisements, we have observed that when a model included multiple random effects, parameter estimates varied considerably from one statistical package to another even when using the same estimation method. This article presents a comprehensive review of the advantages and disadvantages of each estimation method. In addition, we compare the performances of the three methods across statistical packages via simulation, which involves two- and three-level logistic regression models with at least three correlated random effects. We apply our findings to a real dataset. Our results suggest that two packages-SAS GLIMMIX Laplace and SuperMix Gaussian quadrature-perform well in terms of accuracy, precision, convergence rates, and computing speed. We also discuss the strengths and weaknesses of the two packages in regard to sample sizes.

多元随机效应Logistic回归:估计方法与统计包的模拟研究。
一些统计软件包能够估计广义线性混合模型,这些软件包提供三种估计方法中的一种或多种:惩罚拟似然,拉普拉斯和高斯-埃尔米特。许多研究对这些方法在混合效应逻辑回归模型中的性能进行了研究。然而,作者关注的是具有一个或两个随机效应的模型,并假设它们之间存在简单的协方差结构,这可能不太现实。当一个模型中存在多个相关的随机效应时,计算量变得非常大,算法往往无法收敛。此外,在我们对吸烟状况和接触反烟草广告的分析中,我们观察到,当一个模型包含多个随机效应时,即使使用相同的估计方法,不同统计包的参数估计也会有很大差异。本文全面回顾了每种估算方法的优缺点。此外,我们通过模拟比较了三种方法在统计包中的性能,其中包括具有至少三个相关随机效应的两层和三层逻辑回归模型。我们将我们的发现应用于一个真实的数据集。我们的研究结果表明,sas GLIMMIX拉普拉斯和SuperMix高斯正交两种封装在精度、精度、收敛速度和计算速度方面表现良好。我们还讨论了两个包在样本量方面的优点和缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
American Statistician
American Statistician 数学-统计学与概率论
CiteScore
3.50
自引率
5.60%
发文量
64
审稿时长
>12 weeks
期刊介绍: Are you looking for general-interest articles about current national and international statistical problems and programs; interesting and fun articles of a general nature about statistics and its applications; or the teaching of statistics? Then you are looking for The American Statistician (TAS), published quarterly by the American Statistical Association. TAS contains timely articles organized into the following sections: Statistical Practice, General, Teacher''s Corner, History Corner, Interdisciplinary, Statistical Computing and Graphics, Reviews of Books and Teaching Materials, and Letters to the Editor.
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