We present a latent regression model in which the regression function is possibly nonlinear, and not necessarily smooth (e.g., a step function), and in which the residual variances are not necessarily homoskedastic. Heteroskedasticity is modeled by making the conditional (on the predictor) residual variance a (user-specified) function of the predictor. We use indirect mixture modeling to estimate the parameters by marginal maximum likelihood estimation, as proposed by Bock and Aitken (1981) in the context of item-response theory modeling and Klein and Moosbrugger (2000) in the context of structural equation modeling. We present a small simulation study to evaluate power and the consequences of model misspecification, and an illustration con...
Abstract: Finite mixture models have come to play a very prominent role in modelling data. The finit...
A proposal for multivariate regression modeling based on latent predictors (LPs) is presented. The i...
This chapter presents tools to facilitate specific tests on three sources of nonnormality in subtest...
We present a latent regression model in which the regression function is possibly nonlinear, and not...
Regression mixture models are increasingly used as an exploratory approach to identify heterogeneity...
We discuss an extansion of the nonlinear random effects model from Lindstrom and Bates (1990) by add...
Mixture models capture heterogeneity in data by decomposing the population into latent subgroups, ea...
As the size and complexity of modern data sets grows, more and more prediction methods are developed...
This paper proposes a new approach to modeling heteroskedastidty which enables the modeler to utiliz...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
Finite mixture models have come to play a very prominent role in modelling data. The finite mixture ...
The purpose of this study is to provide guidance on a process for including latent class predictors ...
Over the last decade, the number and sophistication of methods used to do regression on complex data...
As a generalization of the accelerated failure time models, we consider parametric models of lifetim...
The purpose of this study is to provide guidance on a process for including latent class predictors ...
Abstract: Finite mixture models have come to play a very prominent role in modelling data. The finit...
A proposal for multivariate regression modeling based on latent predictors (LPs) is presented. The i...
This chapter presents tools to facilitate specific tests on three sources of nonnormality in subtest...
We present a latent regression model in which the regression function is possibly nonlinear, and not...
Regression mixture models are increasingly used as an exploratory approach to identify heterogeneity...
We discuss an extansion of the nonlinear random effects model from Lindstrom and Bates (1990) by add...
Mixture models capture heterogeneity in data by decomposing the population into latent subgroups, ea...
As the size and complexity of modern data sets grows, more and more prediction methods are developed...
This paper proposes a new approach to modeling heteroskedastidty which enables the modeler to utiliz...
International audienceThe analysis of spectra data deduced from proteomics studies in biology or inf...
Finite mixture models have come to play a very prominent role in modelling data. The finite mixture ...
The purpose of this study is to provide guidance on a process for including latent class predictors ...
Over the last decade, the number and sophistication of methods used to do regression on complex data...
As a generalization of the accelerated failure time models, we consider parametric models of lifetim...
The purpose of this study is to provide guidance on a process for including latent class predictors ...
Abstract: Finite mixture models have come to play a very prominent role in modelling data. The finit...
A proposal for multivariate regression modeling based on latent predictors (LPs) is presented. The i...
This chapter presents tools to facilitate specific tests on three sources of nonnormality in subtest...