We discuss a class of difference-based estimators for the autocovariance in nonparametric regression when the signal is discontinuous and the errors form a stationary m-dependent process. These estimators circumvent the particularly challenging task of pre-estimating such an unknown regression function. We provide finite-sample expressions of their mean squared errors for piecewise constant signals and Gaussian errors. Based on this, we derive biased-optimized estimates that do not depend on the unknown autocovariance structure. Notably, for positively correlated errors, that part of the variance of our estimators that depend on the signal is minimal as well. Further, we provide sufficient conditions for root n-consistency; this result is e...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
This article proposes a fully nonparametric kernel method to account for observed covariates in reg...
This paper presents a comprehensive Bayesian approach for semiparametrically estimating an additive ...
We show that difference-based methods can be used to construct simple and explicit estimators of err...
We show that difference-based methods can be used to construct simple and explicit estimators of err...
International audienceIn this paper, we studied an alternative estimator of the regression function ...
International audienceThis paper proposes two novel alternative estimators for the autocovariance fu...
We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that...
In this paper, we introduce a new procedure for the estimation in the nonlinear functional regressio...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Abstract: The varying coefficient model has been popular in the literature. In this paper, we propos...
<p>The work revisits the autocovariance function estimation, a fundamental problem in statistical in...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
A Bayesian approach is presented for nonparametric estimation of an additive regression model with a...
A Bayesian approach is presented for estimating nonparametrically an additive regression model with ...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
This article proposes a fully nonparametric kernel method to account for observed covariates in reg...
This paper presents a comprehensive Bayesian approach for semiparametrically estimating an additive ...
We show that difference-based methods can be used to construct simple and explicit estimators of err...
We show that difference-based methods can be used to construct simple and explicit estimators of err...
International audienceIn this paper, we studied an alternative estimator of the regression function ...
International audienceThis paper proposes two novel alternative estimators for the autocovariance fu...
We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that...
In this paper, we introduce a new procedure for the estimation in the nonlinear functional regressio...
Since the late 90s, Regression Discontinuity (RD) designs have been widely used to estimate Local Av...
Abstract: The varying coefficient model has been popular in the literature. In this paper, we propos...
<p>The work revisits the autocovariance function estimation, a fundamental problem in statistical in...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
A Bayesian approach is presented for nonparametric estimation of an additive regression model with a...
A Bayesian approach is presented for estimating nonparametrically an additive regression model with ...
The existing differenced estimators of error variance in nonparametric regression are interpreted a...
This article proposes a fully nonparametric kernel method to account for observed covariates in reg...
This paper presents a comprehensive Bayesian approach for semiparametrically estimating an additive ...