Department of Sociology, University of North Carolina, Chapel Hill, NC 27599-3210, USA.
Psychol Methods. 2011 Sep;16(3):265-84. doi: 10.1037/a0024448.
In the last 2 decades attention to causal (and formative) indicators has grown. Accompanying this growth has been the belief that one can classify indicators into 2 categories: effect (reflective) indicators and causal (formative) indicators. We argue that the dichotomous view is too simple. Instead, there are effect indicators and 3 types of variables on which a latent variable depends: causal indicators, composite (formative) indicators, and covariates (the "Three Cs"). Causal indicators have conceptual unity, and their effects on latent variables are structural. Covariates are not concept measures, but are variables to control to avoid bias in estimating the relations between measures and latent variables. Composite (formative) indicators form exact linear combinations of variables that need not share a concept. Their coefficients are weights rather than structural effects, and composites are a matter of convenience. The failure to distinguish the Three Cs has led to confusion and questions, such as, Are causal and formative indicators different names for the same indicator type? Should an equation with causal or formative indicators have an error term? Are the coefficients of causal indicators less stable than effect indicators? Distinguishing between causal and composite indicators and covariates goes a long way toward eliminating this confusion. We emphasize the key role that subject matter expertise plays in making these distinctions. We provide new guidelines for working with these variable types, including identification of models, scaling latent variables, parameter estimation, and validity assessment. A running empirical example on self-perceived health illustrates our major points.
在过去的 20 年中,人们越来越关注因果(形成)指标。伴随着这种增长,人们相信可以将指标分为两类:效应(反射)指标和因果(形成)指标。我们认为这种二分法过于简单。相反,存在效应指标和潜变量所依赖的 3 种类型的变量:因果指标、综合(形成)指标和协变量(“三个 C”)。因果指标具有概念统一性,其对潜变量的影响是结构上的。协变量不是概念性度量,而是为了控制偏差而需要控制的变量,以估计度量与潜变量之间的关系。综合(形成)指标是变量的确切线性组合,不一定具有共同的概念。它们的系数是权重而不是结构效应,综合指标是为了方便。未能区分这“三个 C”导致了混淆和问题,例如,因果指标和形成指标是否是同一指标类型的不同名称?具有因果或形成指标的方程是否应有误差项?因果指标的系数是否比效应指标更不稳定?区分因果和综合指标以及协变量在很大程度上消除了这种混淆。我们强调主题专业知识在做出这些区分方面的关键作用。我们提供了处理这些变量类型的新指南,包括模型识别、潜变量缩放、参数估计和有效性评估。一个关于自我感知健康的实证示例说明了我们的主要观点。