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 const...
Researchers are increasingly taking advantage of the latent growth modeling framework to evaluate co...
The widespread use of Pearson correlations and, by extension, the Maximum Likelihood estimation meth...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...
textSocial science researchers are increasingly using multi-group confirmatory factor analysis (MG-C...
The paper describes EV scaling for variances of latent variables included in confirmatory factor mod...
The paper reports an investigation of whether sums of squared factor loadings obtained in confirmato...
In all sorts of research investigations, measuring numerous dependent and independent variables is ...
It has previously been determined that using 3 or 4 points on a categorized response scale will fail...
Type I error rates and power of the likelihood ratio test and bias of the standardized effect size m...
Identifying the dimensional structure of a set of items (e.g., when studying attitudes) is an import...
Scale coarseness is a pervasive yet ignored methodological artifact that attenuates observed correla...
A challenge facing nearly all studies in the psychological sciences is how to best combine multiple ...
Two methods to calculate a measure for the quality of factor score estimates have been proposed. The...
The purpose of this article is to introduce the theoretical implications and analytic strategies of ...
This chapter focuses on formal criteria to assess the dimensionality for exploratory factor modellin...
Researchers are increasingly taking advantage of the latent growth modeling framework to evaluate co...
The widespread use of Pearson correlations and, by extension, the Maximum Likelihood estimation meth...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...
textSocial science researchers are increasingly using multi-group confirmatory factor analysis (MG-C...
The paper describes EV scaling for variances of latent variables included in confirmatory factor mod...
The paper reports an investigation of whether sums of squared factor loadings obtained in confirmato...
In all sorts of research investigations, measuring numerous dependent and independent variables is ...
It has previously been determined that using 3 or 4 points on a categorized response scale will fail...
Type I error rates and power of the likelihood ratio test and bias of the standardized effect size m...
Identifying the dimensional structure of a set of items (e.g., when studying attitudes) is an import...
Scale coarseness is a pervasive yet ignored methodological artifact that attenuates observed correla...
A challenge facing nearly all studies in the psychological sciences is how to best combine multiple ...
Two methods to calculate a measure for the quality of factor score estimates have been proposed. The...
The purpose of this article is to introduce the theoretical implications and analytic strategies of ...
This chapter focuses on formal criteria to assess the dimensionality for exploratory factor modellin...
Researchers are increasingly taking advantage of the latent growth modeling framework to evaluate co...
The widespread use of Pearson correlations and, by extension, the Maximum Likelihood estimation meth...
Many applications of biomedical science involve unobservable constructs, from measurement of health ...