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Structural Equation Modeling With Many Variables: A Systematic Review of Issues and Developments

机译:具有多个变量的结构方程建模:对问题和发展的系统回顾

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Survey data in social, behavioral, and health sciences often contain many variables (p). Structural equation modeling (SEM) is commonly used to analyze such data. With a sufficient number of participants (N), SEM enables researchers to easily set up and reliably test hypothetical relationships among theoretical constructs as well as those between the constructs and their observed indicators. However, SEM analyses with small N or large p have been shown to be problematic. This article reviews issues and solutions for SEM with small N, especially when p is large. The topics addressed include methods for parameter estimation, test statistics for overall model evaluation, and reliable standard errors for evaluating the significance of parameter estimates. Previous recommendations on required sample size N are also examined together with more recent developments. In particular, the requirement for N with conventional methods can be a lot more than expected, whereas new advances and developments can reduce the requirement for N substantially. The issues and developments for SEM with many variables described in this article not only let applied researchers be aware of the cutting edge methodology for SEM with big data as characterized by a large p but also highlight the challenges that methodologists need to face in further investigation.
机译:社会,行为和健康科学中的调查数据通常包含许多变量(p)。结构方程模型(SEM)通常用于分析此类数据。借助足够多的参与者(N),SEM使研究人员能够轻松建立并可靠地测试理论结构之间以及结构与观察指标之间的假设关系。但是,N较小或p大的SEM分析已显示出问题。本文回顾了N较小的SEM的问题和解决方案,尤其是在p大的情况下。涉及的主题包括参数估计的方法,用于整体模型评估的测试统计信息以及用于评估参数估计的重要性的可靠标准误差。还对先前关于所需样本量N的建议以及最近的发展进行了研究。特别地,常规方法对N的需求可能比预期的要多得多,而新的进步和发展可以大大减少N的需求。本文描述的具有许多变量的SEM问题和发展,不仅让应用研究人员了解以大p为特征的大数据SEM的前沿方法,而且还凸显了方法学家在进一步研究中需要面对的挑战。

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