There is currently a lack of methods for non-linear structural equation modeling (NSEM) for non-parametric relationships between latent variables when data are ordinal. To this end, a semiparametric approach for flexible NSEMs without parametric forms is developed for ordinal data. An indirect application of a finite mixture of structural equation models (SEMM) is employed for modeling the conditional expected mean of endogenous latent variables. In this context, the latent classes are not to be interpreted as groups of observations belonging to those classes, rather they serve as means to model flexible non-linear functions as locally linear functions which together approximate a globally non-linear function. The proposed method is based o...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Semiparametrically structured models are defined as a class of models for which the predictors may c...
We present a class of multivariate regression models for ordinal response variables in which the coe...
There is currently a lack of methods for non-linear structural equation modeling (NSEM) for non-para...
The literature on non-linear structural equation modeling is plentiful. Despite this fact, few studi...
To date, finite mixtures of structural equation models (SEMMs) have been developed and applied almos...
In this thesis methods are developed for estimation of latent variable models. In particular nonline...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
A simulation study to compare competing estimators in structural equation models with ordinal variab...
In our thesis work we have addressed a particular attention to the ordinal case, in the perspective...
The Bayesian parametric and semiparametric approaches are compared to recover the polynomial and non...
Structural equation modeling (SEM) of ordinal data is often performed using normal theory maximum li...
A linear Structural Equation Model with Latent Variables (SEM-LV) consists of two sets of equations:...
In socioeconomics or in Biological studies, observations on individuals are often observed longitudi...
Structural equation mixture modeling (SEMM) has become a standard procedure in latent variable model...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Semiparametrically structured models are defined as a class of models for which the predictors may c...
We present a class of multivariate regression models for ordinal response variables in which the coe...
There is currently a lack of methods for non-linear structural equation modeling (NSEM) for non-para...
The literature on non-linear structural equation modeling is plentiful. Despite this fact, few studi...
To date, finite mixtures of structural equation models (SEMMs) have been developed and applied almos...
In this thesis methods are developed for estimation of latent variable models. In particular nonline...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
A simulation study to compare competing estimators in structural equation models with ordinal variab...
In our thesis work we have addressed a particular attention to the ordinal case, in the perspective...
The Bayesian parametric and semiparametric approaches are compared to recover the polynomial and non...
Structural equation modeling (SEM) of ordinal data is often performed using normal theory maximum li...
A linear Structural Equation Model with Latent Variables (SEM-LV) consists of two sets of equations:...
In socioeconomics or in Biological studies, observations on individuals are often observed longitudi...
Structural equation mixture modeling (SEMM) has become a standard procedure in latent variable model...
Structural Equation Modeling (SEM) is widely used in behavioural, social and eco-nomic studies to an...
Semiparametrically structured models are defined as a class of models for which the predictors may c...
We present a class of multivariate regression models for ordinal response variables in which the coe...