We consider the asymptotic analysis of penalized likelihood type estimators for generalized nonparametric regression problems in which the target parameter is a vector-valued function defined in terms of the conditional distribution of a response given a set of covariates. A variety of examples including ones related to generalized linear models and robust smoothing are covered by the theory. Linear approximations to the estimator are constructed using Taylor expansions in Hilbert spaces. An application which is treated is upper bounds on rates of convergence for the penalized likelihood-type estimators.maximum penalized likelihood non-parametric aggression multiple classification smoothing splines rates of convergence (null)
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
this paper. We introduce the generalized likelihood statistics to overcome the drawbacks of nonparam...
This paper focuses on nonparametric regression estimation for the parameters of a discrete or contin...
AbstractWe consider the asymptotic analysis of penalized likelihood type estimators for generalized ...
AbstractWe consider the asymptotic analysis of penalized likelihood type estimators for generalized ...
One popular method for fitting a regression function is regularization: minimize an objective functi...
Denoising, Edge-detection, Generalized linear models, Non-parametric regression, Non-convex analysis...
International audienceOne of the popular method for fitting a regression function is regularization:...
Penalized likelihood method is among the most effective tools for nonparametric multivariate functio...
Abstract. We study maximum penalized likelihood estimation for lo-gistic regression type problems. T...
We analyze in a regression setting the link between a scalar response and a functional predictor by ...
We analyze in a regression setting the link between a scalar response and a functional predictor by ...
ABSTRACT. Weconsider generalized linear models in which the linear predictor is of '.9A additiv...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
this paper. We introduce the generalized likelihood statistics to overcome the drawbacks of nonparam...
This paper focuses on nonparametric regression estimation for the parameters of a discrete or contin...
AbstractWe consider the asymptotic analysis of penalized likelihood type estimators for generalized ...
AbstractWe consider the asymptotic analysis of penalized likelihood type estimators for generalized ...
One popular method for fitting a regression function is regularization: minimize an objective functi...
Denoising, Edge-detection, Generalized linear models, Non-parametric regression, Non-convex analysis...
International audienceOne of the popular method for fitting a regression function is regularization:...
Penalized likelihood method is among the most effective tools for nonparametric multivariate functio...
Abstract. We study maximum penalized likelihood estimation for lo-gistic regression type problems. T...
We analyze in a regression setting the link between a scalar response and a functional predictor by ...
We analyze in a regression setting the link between a scalar response and a functional predictor by ...
ABSTRACT. Weconsider generalized linear models in which the linear predictor is of '.9A additiv...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
this paper. We introduce the generalized likelihood statistics to overcome the drawbacks of nonparam...
This paper focuses on nonparametric regression estimation for the parameters of a discrete or contin...