International audienceIn this paper, an alternative estimation approach is proposed to fit linear mixed effects models where the random effects follow a finite mixture of normal distributions. This heterogeneity linear mixed model is an interesting tool since it relaxes the classical normality assumption and is also perfectly suitable for classification purposes, based on longitudinal profiles. Instead of fitting directly the heterogeneity linear mixed model, we propose to fit an equivalent mixture of linear mixed models under some restrictions which is computationally simpler. Unlike the former model, the latter can be maximized analytically using an EM-algorithm and the obtained parameter estimates can be easily used to compute the parame...
Linear mixed models are widely used when multiple correlated measurements are made on each unit of i...
In linear mixed models, the assumption of normally distributed random effects is often inappropriate...
In linear mixed models, the assumption of normally distributed random effects is often inappropriate...
International audienceIn this paper, an alternative estimation approach is proposed to fit linear mi...
International audienceAn alternative estimation approach is proposed to fit a linear mixed effects m...
International audienceAn alternative estimation approach is proposed to fit a linear mixed effects m...
The aim of this paper is to propose an algorithm to estimate linear mixed model when random effect d...
The aim of this paper is to propose an algorithm to estimate linear mixed model when random effect d...
The aim of this paper is to propose an algorithm to estimate linear mixed model when random effect d...
Finite mixtures of linear mixed models are increasily applied in differentareas of application. They...
AbstractThe paper reviews the linear mixed model with a focus on parameter estimation and inference....
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
Linear mixed models are widely used when multiple correlated measurements are made on each unit of i...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
Linear mixed models are widely used when multiple correlated measurements are made on each unit of i...
In linear mixed models, the assumption of normally distributed random effects is often inappropriate...
In linear mixed models, the assumption of normally distributed random effects is often inappropriate...
International audienceIn this paper, an alternative estimation approach is proposed to fit linear mi...
International audienceAn alternative estimation approach is proposed to fit a linear mixed effects m...
International audienceAn alternative estimation approach is proposed to fit a linear mixed effects m...
The aim of this paper is to propose an algorithm to estimate linear mixed model when random effect d...
The aim of this paper is to propose an algorithm to estimate linear mixed model when random effect d...
The aim of this paper is to propose an algorithm to estimate linear mixed model when random effect d...
Finite mixtures of linear mixed models are increasily applied in differentareas of application. They...
AbstractThe paper reviews the linear mixed model with a focus on parameter estimation and inference....
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
Linear mixed models are widely used when multiple correlated measurements are made on each unit of i...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
Linear mixed models are widely used when multiple correlated measurements are made on each unit of i...
In linear mixed models, the assumption of normally distributed random effects is often inappropriate...
In linear mixed models, the assumption of normally distributed random effects is often inappropriate...