Qijin Chen, Kun Su, Yonglin Feng, Lijin Zhang, Ruyi Ding, Junhao Pan
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引用次数: 0
摘要
本文探讨了贝叶斯结构方程建模(BSEM)在心理学中的应用,强调了其在处理复杂模型和小样本量时优于频数主义方法的优势。文中介绍了与贝叶斯结构方程建模相关的基本概念和基本问题,如先验设定、模型收敛和模型拟合度评估等。本文还提供了常用 BSEM 的示例,包括确证因子分析(CFA)模型、中介模型和多组 CFA 模型,并附有经验数据和计算机代码,以便于实施。我们的目标是为研究人员提供实证研究的新思路,使他们能够克服传统方法固有的挑战。随着 BSEM 在各个领域的不断发展,我们预计其发展将以改进方法、技术和报告标准为特色。
A tutorial on Bayesian structural equation modelling: Principles and applications
This paper explores the utilisation of Bayesian structural equation modelling (BSEM) in psychology, highlighting its advantages over frequentist methods for handling complex models and small sample sizes. Basic concepts and fundamental issues relevant to BSEM are introduced, such as prior setting, model convergence, and model fit evaluation and so on. The paper also provides illustrative examples of commonly employed BSEMs, including confirmatory factor analysis (CFA) models, mediation models and multigroup CFA models, accompanied by empirical data and computer codes to facilitate implementation. Our goal is to provide researchers with novel ideas for empirical research and equip them to overcome challenges inherent to traditional methods. As BSEM continues to gain traction in various fields, we anticipate its development will feature improved methods, techniques and reporting standards.
期刊介绍:
The International Journal of Psychology (IJP) is the journal of the International Union of Psychological Science (IUPsyS) and is published under the auspices of the Union. IJP seeks to support the IUPsyS in fostering the development of international psychological science. It aims to strengthen the dialog within psychology around the world and to facilitate communication among different areas of psychology and among psychologists from different cultural backgrounds. IJP is the outlet for empirical basic and applied studies and for reviews that either (a) incorporate perspectives from different areas or domains within psychology or across different disciplines, (b) test the culture-dependent validity of psychological theories, or (c) integrate literature from different regions in the world.