International audienceWe address the component-based regularisation of a multivariate Generalized Linear Mixed Model (GLMM). A set of random responses Y is modelled by a GLMM, using a set X of explanatory variables, a set T of additional covariates, and random effects used to introduce the dependence between statistical units. Variables in X are assumed many and redundant, so that regression demands regularisation. By contrast, variables in T are assumed few and selected so as to require no regularisation. Regularisation is performed building an appropriate number of orthogonal components that both contribute to model Y and capture relevant structural information in X. To estimate the model, we propose to maximise a criterion specific to th...
This article describes the R package mcglm implemented for fitting multivariate covariance generaliz...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
We address the component-based regularization of a multivariate Generalized Linear Mixed Model (GLMM...
International audienceWe address the component-based regularisation of a multivariate Generalised Li...
We address component-based regularisation of a multivariate Gener-alised Linear Model (GLM). A set o...
We address component-based regularization of a multivariate generalized linear model (GLM). A vector...
We address component-based regularization of a multivariate Generalized Linear Model (GLM). A set of...
International audienceWe address regularised versions of the Expectation-Maximisation (EM) algorithm...
High redundancy of explanatory variables results in identification troubles and a severe lack of sta...
High redundancy of explanatory variables results in identification troubles and a severe lack of sta...
We aim to promote the use of the modified profile likelihood function for estimating the variance pa...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
In the current estimation of a GLM model, the correlation structure of regressors is not used as the...
The Generalized Linear Mixed Model (GLMM) is a natural extension and mixture of a Linear Mixed Model...
This article describes the R package mcglm implemented for fitting multivariate covariance generaliz...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
We address the component-based regularization of a multivariate Generalized Linear Mixed Model (GLMM...
International audienceWe address the component-based regularisation of a multivariate Generalised Li...
We address component-based regularisation of a multivariate Gener-alised Linear Model (GLM). A set o...
We address component-based regularization of a multivariate generalized linear model (GLM). A vector...
We address component-based regularization of a multivariate Generalized Linear Model (GLM). A set of...
International audienceWe address regularised versions of the Expectation-Maximisation (EM) algorithm...
High redundancy of explanatory variables results in identification troubles and a severe lack of sta...
High redundancy of explanatory variables results in identification troubles and a severe lack of sta...
We aim to promote the use of the modified profile likelihood function for estimating the variance pa...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
In the current estimation of a GLM model, the correlation structure of regressors is not used as the...
The Generalized Linear Mixed Model (GLMM) is a natural extension and mixture of a Linear Mixed Model...
This article describes the R package mcglm implemented for fitting multivariate covariance generaliz...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...