Motivated by the problem of setting prediction intervals in time series analysis, this investigation is concerned with recovering regression function m(X_t) on the basis of noisy observations taking at random design points X_t. It is presumed that the corresponding observations are corrupted by additive serially correlated noise and that the noise is, in fact, induced by a general linear process. The main result of this study is that, under some reasonable conditions, the nonparametric kernel estimator of m(x) is asymptotically normally distributed. The result can be used to construct confidence bands for m(x). Simulations are conducted to assess the performance of these bands in finite-sample situations
International audienceThe problem of estimating the regression function in a fixed design models wit...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
A comprehensive description is given of the limiting behaviour of normalised pseudo-MLEs of the coef...
Estimates of error correlations in kernel nonparametric regression are obtained using the method of ...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...
AbstractWe consider a panel data semiparametric partially linear regression model with an unknown ve...
International audienceIn this paper, we investigate the problem of estimating the regression functio...
AbstractMotivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares e...
Motivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares estimator...
We consider a random design model based on independent and identically distributed (iid) pairs of ob...
We consider a semiparametric distributed lag model in which the “news impact curve” m is nonparametr...
This paper is concerned with estimating nonparametric regression function g on the basis of noisy ob...
In a nonparametric setting, the functional form of the relationship between the response variable an...
Nonparametric regression techniques are often sensitive to the presence of correlation in the errors...
International audienceThe problem of estimating the regression function in a fixed design models wit...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
A comprehensive description is given of the limiting behaviour of normalised pseudo-MLEs of the coef...
Estimates of error correlations in kernel nonparametric regression are obtained using the method of ...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...
AbstractWe consider a panel data semiparametric partially linear regression model with an unknown ve...
International audienceIn this paper, we investigate the problem of estimating the regression functio...
AbstractMotivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares e...
Motivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares estimator...
We consider a random design model based on independent and identically distributed (iid) pairs of ob...
We consider a semiparametric distributed lag model in which the “news impact curve” m is nonparametr...
This paper is concerned with estimating nonparametric regression function g on the basis of noisy ob...
In a nonparametric setting, the functional form of the relationship between the response variable an...
Nonparametric regression techniques are often sensitive to the presence of correlation in the errors...
International audienceThe problem of estimating the regression function in a fixed design models wit...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
A comprehensive description is given of the limiting behaviour of normalised pseudo-MLEs of the coef...