Structural Equation Models assume homogeneity across the entire sample. In other words, all the units are supposed to be well represented by a unique model. Not taking into account heterogeneity among units may lead to biased results in terms of model parameters. That is why, nowadays, more attention is focused on techniques able to detect unobserved heterogeneity in Structural Equation Models. However, once unit partition obtained according to the chosen clustering methods, it is important to state if taking into account local models provides better results than using a single model for the whole sample. Here, a new index to assess detected unit partition will be presented: the Group Quality Index. A simulation study involving two differen...
We present in this paper a methodology to deal with heterogeneity in modelling when the sources are ...
This is the peer reviewed version of the following article: Giuseppe Lamberti, Aluja, T., G. S. The ...
When applying multivariate analysis techniques in information systems and social science disciplines...
Abstract Structural Equation Models assume homogeneity across the entire sam-ple. In other words, al...
Structural equation models (SEMs) make it possible to estimate the causal relationships, defined acc...
A large proportion of information systems research is concerned with developing and testing models p...
A large proportion of information systems research is concerned with developing and testing models p...
This simulation study examines the performance of fit indices commonly used by applied researchers i...
When applying the partial least squares structural equation modeling (PLSSEM) method, the assumption...
The identification of different homogeneous groups of observations and their appropriate analysis in...
Latent class analysis (LCA) is a widely used statistical technique for identifying subgroups in the ...
In classical model fitting techinques, such as traditional Multiple Linear Regression models (MLR) o...
Latent segmentation procedures are usually aimed at detecting the heterogeneity of statisitical unit...
Segmentation in PLS path modeling framework results is a critical issue in social sciences. The assu...
Klesel, M., Schuberth, F., Niehaves, B., & Henseler, J. (2022). Multigroup Analysis in Information S...
We present in this paper a methodology to deal with heterogeneity in modelling when the sources are ...
This is the peer reviewed version of the following article: Giuseppe Lamberti, Aluja, T., G. S. The ...
When applying multivariate analysis techniques in information systems and social science disciplines...
Abstract Structural Equation Models assume homogeneity across the entire sam-ple. In other words, al...
Structural equation models (SEMs) make it possible to estimate the causal relationships, defined acc...
A large proportion of information systems research is concerned with developing and testing models p...
A large proportion of information systems research is concerned with developing and testing models p...
This simulation study examines the performance of fit indices commonly used by applied researchers i...
When applying the partial least squares structural equation modeling (PLSSEM) method, the assumption...
The identification of different homogeneous groups of observations and their appropriate analysis in...
Latent class analysis (LCA) is a widely used statistical technique for identifying subgroups in the ...
In classical model fitting techinques, such as traditional Multiple Linear Regression models (MLR) o...
Latent segmentation procedures are usually aimed at detecting the heterogeneity of statisitical unit...
Segmentation in PLS path modeling framework results is a critical issue in social sciences. The assu...
Klesel, M., Schuberth, F., Niehaves, B., & Henseler, J. (2022). Multigroup Analysis in Information S...
We present in this paper a methodology to deal with heterogeneity in modelling when the sources are ...
This is the peer reviewed version of the following article: Giuseppe Lamberti, Aluja, T., G. S. The ...
When applying multivariate analysis techniques in information systems and social science disciplines...