Hoyle R H
Department of Psychology, University of Kentucky, Lexington 40506-0044.
J Consult Clin Psychol. 1991 Feb;59(1):67-76. doi: 10.1037//0022-006x.59.1.67.
Indirect measures of psychological constructs are vital to clinical research. On occasion, however, the meaning of indirect measures of psychological constructs is obfuscated by statistical procedures that do not account for the complex relations between items and latent variables and among latent variables. Covariance structure analysis (CSA) is a statistical procedure for testing hypotheses about the relations among items that indirectly measure a psychological construct and relations among psychological constructs. This article introduces clinical researchers to the strengths and limitations of CSA as a statistical procedure for conceiving and testing structural hypotheses that are not tested adequately with other statistical procedures. The article is organized around two empirical examples that illustrate the use of CSA for evaluating measurement models with correlated error terms, higher-order factors, and measured and latent variables.
心理构念的间接测量方法对临床研究至关重要。然而,有时心理构念的间接测量方法的含义会被一些统计程序所混淆,这些程序没有考虑到项目与潜在变量之间以及潜在变量之间的复杂关系。协方差结构分析(CSA)是一种统计程序,用于检验关于间接测量心理构念的项目之间的关系以及心理构念之间的关系的假设。本文向临床研究人员介绍了CSA作为一种统计程序的优点和局限性,该程序用于构思和检验用其他统计程序无法充分检验的结构假设。本文围绕两个实证例子展开,这两个例子说明了CSA在评估具有相关误差项、高阶因子以及测量变量和潜在变量的测量模型中的应用。