Hwang Heungsun, Takane Yoshio, Jung Kwanghee
Department of Psychology, McGill University, Montreal, QC, Canada.
Department of Psychology, University of Victoria, BC, Canada.
Front Psychol. 2017 Dec 6;8:2137. doi: 10.3389/fpsyg.2017.02137. eCollection 2017.
Generalized structured component analysis (GSCA) is a component-based approach to structural equation modeling (SEM), where latent variables are approximated by weighted composites of indicators. It has no formal mechanism to incorporate errors in indicators, which in turn renders components prone to the errors as well. We propose to extend GSCA to account for errors in indicators explicitly. This extension, called GSCA, considers both common and unique parts of indicators, as postulated in common factor analysis, and estimates a weighted composite of indicators with their unique parts removed. Adding such unique parts or uniqueness terms serves to account for measurement errors in indicators in a manner similar to common factor analysis. Simulation studies are conducted to compare parameter recovery of GSCA and existing methods. These methods are also applied to fit a substantively well-established model to real data.
广义结构化成分分析(GSCA)是一种基于成分的结构方程建模(SEM)方法,其中潜在变量由指标的加权组合近似表示。它没有将指标误差纳入的正式机制,这反过来又使成分也容易出现误差。我们建议扩展GSCA以明确考虑指标误差。这种扩展后的方法称为EGSCA,它考虑了指标的共同部分和独特部分,正如在共同因子分析中所假设的那样,并估计去除了独特部分的指标加权组合。添加这些独特部分或独特性项有助于以类似于共同因子分析的方式考虑指标中的测量误差。进行了模拟研究以比较GSCA和现有方法的参数恢复情况。这些方法还被应用于对实际数据拟合一个实质上已确立的模型。