This paper addresses the problem of comparing the fit of latent class and latent trait models when the indicators are binary and the contingency table is sparse. This problem is common in the analysis of data from large surveys, where many items are associated with an unobservable variable. A study of human resource data illustrates: (1) how the usual goodness-of-fit tests, model selection and cross-validation criteria can be inconclusive; (2) how model selection and evaluation procedures from time series and economic forecasting can be applied to extend residual analysis in this context.Multivariate statistics, latent variable models, forecast encompassing, human resource management,
Generalized linear latent variable models (GLLVM) aim to explain the interrelationships among a set ...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
Researchers dealing with the task of estimating locations of individuals on continuous latent variab...
In recent years several authors have viewed latent trait models for binary data as special models fo...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
Within the context of a latent class model with manifest binary variables, we propose an alternative...
In recent years several authors have viewed latent trait models for binary data as special models f...
The study explored fit of empirical data to the Rasch and three-parameter logistic latent trait mode...
Generalized Linear Latent Variables Models (GLLVM) enable the modelling of relationships between man...
This edited volume features cutting-edge topics from the leading researchers in the areas of latent ...
Models for converting expert-coded data to point estimates of latent concepts assume different data-...
Model-based clustering methods for continuous data are well established and commonly used in a wide ...
WOS: 000350081200007Purpose of this study is to investigate measurement equivalence with latent clas...
This thesis consists of four papers that deal with several aspects of the measurement of model fit f...
Responses to a set of indicators, or items, or variables are often used in social sciences for measu...
Generalized linear latent variable models (GLLVM) aim to explain the interrelationships among a set ...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
Researchers dealing with the task of estimating locations of individuals on continuous latent variab...
In recent years several authors have viewed latent trait models for binary data as special models fo...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
Within the context of a latent class model with manifest binary variables, we propose an alternative...
In recent years several authors have viewed latent trait models for binary data as special models f...
The study explored fit of empirical data to the Rasch and three-parameter logistic latent trait mode...
Generalized Linear Latent Variables Models (GLLVM) enable the modelling of relationships between man...
This edited volume features cutting-edge topics from the leading researchers in the areas of latent ...
Models for converting expert-coded data to point estimates of latent concepts assume different data-...
Model-based clustering methods for continuous data are well established and commonly used in a wide ...
WOS: 000350081200007Purpose of this study is to investigate measurement equivalence with latent clas...
This thesis consists of four papers that deal with several aspects of the measurement of model fit f...
Responses to a set of indicators, or items, or variables are often used in social sciences for measu...
Generalized linear latent variable models (GLLVM) aim to explain the interrelationships among a set ...
Latent variable models are widely used in social sciences in which interest is centred on entities s...
Researchers dealing with the task of estimating locations of individuals on continuous latent variab...