Multivariate regression analysis is a well-known technique used to predict values of d responses from a set of p regressors. Usually, it is assumed that the error term has a multivariate normal distribution with a zero mean vector and a positive definited covariance matrix. However, in many real situations this assumption may be unrealistic. This problem has been addressed by several authors (see for example Ferreira and Steel (2004), Batsidis and Zografos (2008) and the references therein), through the introduction of multivariate skewed and/or heavy-tailed distributions. In this paper, we approach this problem in a semi-parametric setting, by modeling the error term distribution through a finite mixture of d-dimensional Gaussian component...
Existing research on mixtures of regression models are limited to directly observed predictors. The ...
Mild to moderate skew in errors can substantially impact regression mixture model results; one appro...
This paper discusses the problem of statistical inference in multivariate linear regression models w...
Multivariate regression analysis is a well-known technique used to predict values of d responses fro...
none2In some situations, the distribution of the error terms of a multivariate linear regression mod...
none2noRecently, finite mixture models have been used to model the distribution of the error terms i...
In many situations, the distribution of the error terms of a linear regression model departs signifi...
Seemingly unrelated linear regression models are introduced in which the distribution of the errors ...
The traditional estimation of mixture regression models is based on the assumption of normality (sym...
open3noThis paper addresses two crucial issues in multiple linear regression analysis: (i) error ter...
In the fitting of mixtures of linear regression models, the normal assumption has been traditionally...
International audienceWe introduce in this paper a new mixture of regressions model which is a gener...
Finite mixture of regression (FMR) models can be reformulated as incomplete data problems and they c...
The existing methods for tting mixture regression models assume a normal dis-tribution for error and...
this paper use consider the problem of providing standard errors of the component means in normal mi...
Existing research on mixtures of regression models are limited to directly observed predictors. The ...
Mild to moderate skew in errors can substantially impact regression mixture model results; one appro...
This paper discusses the problem of statistical inference in multivariate linear regression models w...
Multivariate regression analysis is a well-known technique used to predict values of d responses fro...
none2In some situations, the distribution of the error terms of a multivariate linear regression mod...
none2noRecently, finite mixture models have been used to model the distribution of the error terms i...
In many situations, the distribution of the error terms of a linear regression model departs signifi...
Seemingly unrelated linear regression models are introduced in which the distribution of the errors ...
The traditional estimation of mixture regression models is based on the assumption of normality (sym...
open3noThis paper addresses two crucial issues in multiple linear regression analysis: (i) error ter...
In the fitting of mixtures of linear regression models, the normal assumption has been traditionally...
International audienceWe introduce in this paper a new mixture of regressions model which is a gener...
Finite mixture of regression (FMR) models can be reformulated as incomplete data problems and they c...
The existing methods for tting mixture regression models assume a normal dis-tribution for error and...
this paper use consider the problem of providing standard errors of the component means in normal mi...
Existing research on mixtures of regression models are limited to directly observed predictors. The ...
Mild to moderate skew in errors can substantially impact regression mixture model results; one appro...
This paper discusses the problem of statistical inference in multivariate linear regression models w...