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An Empirical Evaluation of Mediation Effect Analysis With Manifest and Latent Variables Using Markov Chain Monte Carlo and Alternative Estimation Methods

机译:马尔可夫链蒙特卡罗法和替代估计法对含清单变量和潜在变量的中介效应分析的经验评估

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摘要

Recently, the Markov chain Monte Carlo (MCMC) estimation method has become explosively popular in a variety of quantitative research methods. In mediation effect analysis (MEA), the MCMC estimation methods can be a promising tool and an important alternative as compared with traditional methods (e.g., the z test using the delta method and the bias-corrected bootstrapping method) in addressing issues such as nonconvergence and complex modeling. In this article, a subject-level MCMC approach for the single MEA is empirically evaluated and compared with traditional methods through Monte Carlo simulation. The evaluation covers point and interval estimates of both manifest and latent variables across conditions including sample size, effect size, and magnitude of factor loadings. BUGS codes for MEA with both manifest and latent variables are provided that can be easily adapted to fit various MEA models in practice.
机译:最近,马尔可夫链蒙特卡罗(MCMC)估计方法在各种定量研究方法中爆炸性地普及。在调解效果分析(MEA)中,MCMC估计方法在解决诸如非收敛性等问题时,与传统方法(例如,使用增量法和偏差校正自举法的z检验)相比,可以成为有前途的工具和重要的替代方案和复杂的建模。在本文中,对单个MEA的主题级MCMC方法进行了经验评估,并通过蒙特卡洛模拟将其与传统方法进行了比较。该评估涵盖了跨条件的清单变量和潜在变量的点和区间估计,包括样本大小,效应大小和因素负荷的大小。提供了具有清单变量和潜在变量的MEA的BUGS代码,可以在实践中轻松调整以适合各种MEA模型。

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