International audienceWe study the estimation of the mean function of a continuous-time stochastic process and its derivatives. The covariance function of the process is assumed to be nonparametric and to satisfy mild smoothness conditions. Assuming that n independent realizations of the process are observed at a sampling design of size N generated by a positive density, we derive the asymptotic bias and variance of the local polynomial estimator as n, N increase to infinity. We deduce optimal sampling densities, optimal bandwidths, and propose a new plug-in bandwidth selection method. We establish the asymptotic performance of the plug-in bandwidth estimator and we compare, in a simulation study, its performance for finite sizes n, N to th...
Optimal bandwidths for local polynomial regression usually involve functionals of the derivatives of...
This master thesis aims at estimating state price densities (SPD) via a nonparametric fit of the imp...
Optimal bandwidths for local polynomial regression usually involve functionals of the deriva tives o...
We study the estimation of the mean function of a continuous-time stochastic process and i...
A decisive question in nonparametric smoothing techniques is the choice of the bandwidth or smoothin...
We consider the properties of the local polynomial estimators of a counting process intensity functi...
We propose a theoretical approach to automated bandwidth choice for continuous-time Markov processes...
Local polynomial methods hold considerable promise for boundary estimation, where they offer unmatch...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
Local polynomial regression is commonly used for estimating regression functions. In practice, howev...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
In non-parametric function estimation selection of a smoothing parameter is one of the most importan...
In this paper, we study the nonparametric estimation of the regression function and its derivatives...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
The empirical-bias bandwidth selector (EBBS) is a method for data-driven selection of bandwidths for...
Optimal bandwidths for local polynomial regression usually involve functionals of the derivatives of...
This master thesis aims at estimating state price densities (SPD) via a nonparametric fit of the imp...
Optimal bandwidths for local polynomial regression usually involve functionals of the deriva tives o...
We study the estimation of the mean function of a continuous-time stochastic process and i...
A decisive question in nonparametric smoothing techniques is the choice of the bandwidth or smoothin...
We consider the properties of the local polynomial estimators of a counting process intensity functi...
We propose a theoretical approach to automated bandwidth choice for continuous-time Markov processes...
Local polynomial methods hold considerable promise for boundary estimation, where they offer unmatch...
The conditional variance function in a heteroscedastic, nonparametric regression model is estimated ...
Local polynomial regression is commonly used for estimating regression functions. In practice, howev...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
In non-parametric function estimation selection of a smoothing parameter is one of the most importan...
In this paper, we study the nonparametric estimation of the regression function and its derivatives...
The thesis studies variance function estimation in nonparametric regression model. It focuses on loc...
The empirical-bias bandwidth selector (EBBS) is a method for data-driven selection of bandwidths for...
Optimal bandwidths for local polynomial regression usually involve functionals of the derivatives of...
This master thesis aims at estimating state price densities (SPD) via a nonparametric fit of the imp...
Optimal bandwidths for local polynomial regression usually involve functionals of the deriva tives o...