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Sample Size Considerations in Prevention Research Applications of Multilevel Modeling and Structural Equation Modeling

机译:多层模型和结构方程模型的预防研究应用中的样本量注意事项

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摘要

When the goal of prevention research is to capture in statistical models some measure of the dynamic complexity in structures and processes implicated in problem behavior and its prevention, approaches such as multilevel modeling (MLM) and structural equation modeling (SEM) are indicated. Yet the assumptions that must be satisfied if these approaches are to be used responsibly raise concerns regarding their use in prevention research involving smaller samples. In this manuscript we discuss in nontechnical terms the role of sample size in MLM and SEM and present findings from the latest simulation work on the performance of each approach at sample sizes typical of prevention research. For each statistical approach, we draw from extant simulation studies to establish lower bounds for sample size (e.g., MLM can be applied with as few as 10 groups comprising 10 members with normally distributed data, restricted maximum likelihood estimation, and a focus on fixed effects; sample sizes as small as N = 50 can produce reliable SEM results with normally distributed data and at least three reliable indicators per factor) and suggest strategies for making the best use of the modeling approach when N is near the lower bound.
机译:当预防研究的目的是要在统计模型中捕获某种涉及问题行为及其预防的结构和过程的动态复杂性的度量时,应指出诸如多层建模(MLM)和结构方程建模(SEM)之类的方法。但是,如果要负责任地使用这些方法,必须满足的假设引起了人们对它们在涉及较小样本的预防研究中的使用的担忧。在本手稿中,我们以非技术性的方式讨论了样本量在MLM和SEM中的作用,并介绍了最新模拟工作中在预防研究中典型的样本量下每种方法的效果。对于每种统计方法,我们都从现有的模拟研究中得出样本量的下限(例如,可以将MLM应用于10个组,包括10个成员,这些成员具有正态分布的数据,有限的最大似然估计以及对固定效应的关注;小至N = 50的样本量可以产生具有正态分布数据的可靠SEM结果,并且每个因子至少三个可靠指标),并提出了在N接近下限时最好地利用建模方法的策略。

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