McNeish Daniel
Arizona State University.
Struct Equ Modeling. 2019;26(6):948-966. doi: 10.1080/10705511.2019.1578657. Epub 2019 Mar 28.
Advances in data collection have made intensive longitudinal data easier to collect, unlocking potential for methodological innovations to model such data. Dynamic structural equation modeling (DSEM) is one such methodology but recent studies have suggested that its small N performance is poor. This is problematic because small N data are omnipresent in empirical applications due to logistical and financial concerns associated with gathering many measurements on many people. In this paper, we discuss how previous studies considering small samples have focused on Bayesian methods with diffuse priors. The small sample literature has shown that diffuse priors may cause problems because they become unintentionally informative. Instead, we outline how researchers can create weakly informative admissible-range-restricted priors, even in the absence of previous studies. A simulation study shows that metrics like relative bias and non-null detection rates with these admissible-range-restricted priors improve small N properties of DSEM compared to diffuse priors.
数据收集方面的进展使得密集纵向数据更易于收集,为对这类数据进行建模的方法创新释放了潜力。动态结构方程建模(DSEM)就是这样一种方法,但最近的研究表明其小样本性能较差。这是个问题,因为由于在许多人身上收集大量测量数据涉及后勤和财务问题,小样本数据在实证应用中无处不在。在本文中,我们讨论了以往考虑小样本的研究如何聚焦于具有扩散先验的贝叶斯方法。小样本相关文献表明,扩散先验可能会引发问题,因为它们会无意中变得具有信息性。相反,我们概述了研究人员如何创建弱信息性的可接受范围受限先验,即使在没有先前研究的情况下。一项模拟研究表明,与扩散先验相比,使用这些可接受范围受限先验时,相对偏差和非零检测率等指标可改善DSEM的小样本属性。