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A Comparison of Penalized Maximum Likelihood Estimation and Markov Chain Monte Carlo Techniques for Estimating Confirmatory Factor Analysis Models With Small Sample Sizes

机译:惩罚最大似然估计和马尔可夫链蒙特卡罗技术的比较估算小型样本尺寸的验证因子分析模型

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摘要

With small to modest sample sizes and complex models, maximum likelihood (ML) estimation of confirmatory factor analysis (CFA) models can show serious estimation problems such as non-convergence or parameter estimates outside the admissible parameter space. In this article, we distinguish different Bayesian estimators that can be used to stabilize the parameter estimates of a CFA: the mode of the joint posterior distribution that is obtained from penalized maximum likelihood (PML) estimation, and the mean (EAP), median (Med), or mode (MAP) of the marginal posterior distribution that are calculated by using Markov Chain Monte Carlo (MCMC) methods. In two simulation studies, we evaluated the performance of the Bayesian estimators from a frequentist point of view. The results show that the EAP produced more accurate estimates of the latent correlation in many conditions and outperformed the other Bayesian estimators in terms of root mean squared error (RMSE). We also argue that it is often advantageous to choose a parameterization in which the main parameters of interest are bounded, and we suggest the four-parameter beta distribution as a prior distribution for loadings and correlations. Using simulated data, we show that selecting weakly informative four-parameter beta priors can further stabilize parameter estimates, even in cases when the priors were mildly misspecified. Finally, we derive recommendations and propose directions for further research.
机译:小于适度的样本尺寸和复杂的模型,最大可能性(ML)估计确认因子分析(CFA)模型可以显示出严重的估计问题,例如可允许参数空间之外的非收敛性或参数估计。在本文中,我们区分了可用于稳定CFA的参数估计的不同贝叶斯估计:从惩罚最大可能性(PML)估计中获得的联合后部分布的模式,以及平均值(EAP),中位数(使用Markov链蒙特卡罗(MCMC)方法计算的边缘后分布的MED)或模式(地图)。在两项模拟研究中,我们评估了贝叶斯估计从常见的角度来表现的性能。该结果表明,该EAP产生在许多条件下潜相关的更准确的估计,并在根均方误差(RMSE)方面优于其他贝叶斯估计。我们还认为选择感兴趣的主要参数的参数化通常是有利的,我们建议四个参数测试版分布作为负载和相关的先前分配。使用模拟数据,我们表明,选择弱富有信息的四参数β前沿可以进一步稳定参数估​​计,即使在药剂温和地错过的情况下。最后,我们派生建议并提出进一步研究的指示。

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