AbstractWe propose a class of robust estimates for multivariate linear models. Based on the approach of MM-estimation (Yohai 1987, [24]), we estimate the regression coefficients and the covariance matrix of the errors simultaneously. These estimates have both a high breakdown point and high asymptotic efficiency under Gaussian errors. We prove consistency and asymptotic normality assuming errors with an elliptical distribution. We describe an iterative algorithm for the numerical calculation of these estimates. The advantages of the proposed estimates over their competitors are demonstrated through both simulated and real data
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
AbstractWe propose a class of robust estimates for multivariate linear models. Based on the approach...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM e...
En esta tesis, proponemos una clase de estimadores robustos para modelos lineales multivariados. Bas...
AbstractWe introduce a class of robust estimates for multivariate linear models. The regression coef...
We introduce a class of robust estimates for multivariate linear models. The regression coefficients...
En esta tesis, proponemos una clase de estimadores robustos para modelos lineales multivariados. Bas...
AbstractWe introduce a class of robust estimates for multivariate linear models. The regression coef...
AbstractA unified approach of treating multivariate linear normal models is presented. The results o...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
AbstractWe propose a class of robust estimates for multivariate linear models. Based on the approach...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM-e...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM e...
En esta tesis, proponemos una clase de estimadores robustos para modelos lineales multivariados. Bas...
AbstractWe introduce a class of robust estimates for multivariate linear models. The regression coef...
We introduce a class of robust estimates for multivariate linear models. The regression coefficients...
En esta tesis, proponemos una clase de estimadores robustos para modelos lineales multivariados. Bas...
AbstractWe introduce a class of robust estimates for multivariate linear models. The regression coef...
AbstractA unified approach of treating multivariate linear normal models is presented. The results o...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
Mixed linear models are used to analyze data in many settings. These models have in most cases a mul...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...