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Prior Sensitivity Analysis in Default Bayesian Structural Equation Modeling

机译:默认贝叶斯结构方程建模中的先前灵敏度分析

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Bayesian structural equation modeling (BSEM) has recently gained popularity because it enables researchers to fit complex models and solve some of the issues often encountered in classical maximum likelihood estimation, such as nonconvergence and inadmissible solutions. An important component of any Bayesian analysis is the prior distribution of the unknown model parameters. Often, researchers rely on default priors, which are constructed in an automatic fashion without requiring substantive prior information. However, the prior can have a serious influence on the estimation of the model parameters, which affects the mean squared error, bias, coverage rates, and quantiles of the estimates. In this article, we investigate the performance of three different default priors: noninformative improper priors, vague proper priors, and empirical Bayes priors-with the latter being novel in the BSEM literature. Based on a simulation study, we find that these three default BSEM methods may perform very differently, especially with small samples. A careful prior sensitivity analysis is therefore needed when performing a default BSEM analysis. For this purpose, we provide a practical step-by-step guide for practitioners to conducting a prior sensitivity analysis in default BSEM. Our recommendations are illustrated using a well-known case study from the structural equation modeling literature, and all code for conducting the prior sensitivity analysis is available in the online supplemental materials.
机译:贝叶斯结构方程建模(BSEM)最近获得了流行,因为它使研究人员能够拟合复杂的模型并解决经典最大似然估计中经常遇到的一些问题,例如不融合和不可接受的解决方案。任何贝叶斯分析的重要组成部分是未知模型参数的先验分布。通常,研究人员依靠默认的先验,这些先验是自动构建的,而无需实质性的事先信息。但是,先验可能会严重影响模型参数的估计,这会影响估计值的平方误差,偏置,覆盖率和分位数。在本文中,我们研究了三个不同的默认先验的表现:非信息不当的先验,模糊的适当先验和经验贝叶斯先验,后者在BSEM文献中是新颖的。根据模拟研究,我们发现这三种默认的BSEM方法的性能可能非常不同,尤其是在小样本中。因此,在执行默认的BSEM分析时需要进行仔细的事先灵敏度分析。为此,我们为从业者提供了实用的逐步指南,以在默认BSEM中进​​行先前的灵敏度分析。使用众所周知的结构方程模型文献研究来说明我们的建议,并在在线补充材料中获得所有进行先前灵敏度分析的代码。

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