We consider regression models with randomly right-censored responses. We propose new estimators of the regression function in parametric models, and nonparametric lack-of-fit tests of these models. We then adapt these methods to the study of a semiparametric single-index model, in order to generalize dimension reduction techniques used in absence of censoring. We first consider models relying on more restrictive identifiability conditions, and then consider the case when the response and the censoring variable are independent conditionally to the covariates. In this last kind of models, actual techniques do not allow to estimate the regression function when there is more than one covariate. We develop a new dimension reduction approach to c...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
Nous considérons des modèles de régression où la variable expliquée est censurée à droite aléatoirem...
In this thesis we introduce semi-parametric models for dimension reduction in a standard censoring s...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
Consider a random vector (X ′, Y)′, where X is d-dimensional and Y is one-dimensional. We assume tha...
Consider a random vector (X ′ , Y )′ , where X is d-dimensional and Y is one-dimensional. We assume ...
Consider a random vector (X',Y)', where X is d-dimensional and Y is one-dimensional.We assume that Y...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
We consider regression models with randomly right-censored responses. We propose new estimators of t...
Nous considérons des modèles de régression où la variable expliquée est censurée à droite aléatoirem...
In this thesis we introduce semi-parametric models for dimension reduction in a standard censoring s...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
Consider a random vector (X ′, Y)′, where X is d-dimensional and Y is one-dimensional. We assume tha...
Consider a random vector (X ′ , Y )′ , where X is d-dimensional and Y is one-dimensional. We assume ...
Consider a random vector (X',Y)', where X is d-dimensional and Y is one-dimensional.We assume that Y...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...