Scaling the Variance of a Latent Variable While Assuring Constancy of the Model

Front Psychol. 2019 Apr 24:10:887. doi: 10.3389/fpsyg.2019.00887. eCollection 2019.

Abstract

This paper investigates how the major outcome of a confirmatory factor investigation is preserved when scaling the variance of a latent variable by the various scaling methods. A constancy framework, based upon the underlying factor analysis formula that enables scaling by modifying components through scalar multiplication, is described; a proof is included to demonstrate the constancy property of the framework. It provides the basis for a scaling method that enables the comparison of the contribution of different latent variables of the same confirmatory factor model to observed scores, as for example, the contributions of trait and method latent variables. Furthermore, it is shown that available scaling methods are in line with this constancy framework and that the criterion number included in some scaling methods enables modifications. The impact of the number of manifest variables on the scaled variance parameter can be modified and the range of possible values. It enables the adaptation of scaling methods to the requirements of the field of application.

Keywords: confirmatory factor analysis; constancy framework; scaling; scaling methods; structural equation modeling; variance of latent variable; variance parameter.