Structural equation models enable the modeling of interactions between observed variables and latent ones. The two leading estimation methods are partial least squares on components and covariance-structure analysis. In this work, we first describe the PLS-PM and CBSEM methods and, then, we propose an estimation method using the EM algorithm in order to maximize the likelihood of a structural equation model with latent factors. Through a simulation study, we investigate how fast and accurate the method is, and thanks to an application to real environmental data, we show how one can handly construct a model or evaluate its quality. Finally, in the context of oncology, we apply the EM approach on health-related quality-of-life data. We show t...
We provide a package called plssem that fits partial least squares structural equation models, which...
The Chapter deals with the Partial Least Squares (PLS) estimation algorithm and its use in the conte...
We present two algorithms for inducing structural equation models from data. Assuming no latent vari...
Structural equation models enable the modeling of interactions between observed variables and latent...
Les modèles d'équations structurelles à variables latentes permettent de modéliser des relations ent...
Path models with latent variables are complex statistical models able to interpret interactions betw...
Structural equation modelling is a widespread approach in a variety of domains and is first applied ...
Structural Equation Models with Latent Variables (SEM-LV) are commonly used in frameworks, e.g. Cust...
Owing to the nature of the problems and the design of questionnaires, discrete polytomous data are v...
Cahier de Recherche du Groupe HEC Paris, n° 885Two complementary schools have come to the fore in th...
The main goal of this thesis is to develop new methodologies for the analysis of non linear mixed-ef...
© 2019, Springer Fachmedien Wiesbaden GmbH, ein Teil von Springer Nature. This contribution focuses ...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Meta-analytic structural equation modeling (MASEM) involves fitting models to a common population co...
Les idées développées d'ans ce texte s'inspirent de l'approche des modèles à variables latentes par ...
We provide a package called plssem that fits partial least squares structural equation models, which...
The Chapter deals with the Partial Least Squares (PLS) estimation algorithm and its use in the conte...
We present two algorithms for inducing structural equation models from data. Assuming no latent vari...
Structural equation models enable the modeling of interactions between observed variables and latent...
Les modèles d'équations structurelles à variables latentes permettent de modéliser des relations ent...
Path models with latent variables are complex statistical models able to interpret interactions betw...
Structural equation modelling is a widespread approach in a variety of domains and is first applied ...
Structural Equation Models with Latent Variables (SEM-LV) are commonly used in frameworks, e.g. Cust...
Owing to the nature of the problems and the design of questionnaires, discrete polytomous data are v...
Cahier de Recherche du Groupe HEC Paris, n° 885Two complementary schools have come to the fore in th...
The main goal of this thesis is to develop new methodologies for the analysis of non linear mixed-ef...
© 2019, Springer Fachmedien Wiesbaden GmbH, ein Teil von Springer Nature. This contribution focuses ...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Meta-analytic structural equation modeling (MASEM) involves fitting models to a common population co...
Les idées développées d'ans ce texte s'inspirent de l'approche des modèles à variables latentes par ...
We provide a package called plssem that fits partial least squares structural equation models, which...
The Chapter deals with the Partial Least Squares (PLS) estimation algorithm and its use in the conte...
We present two algorithms for inducing structural equation models from data. Assuming no latent vari...