In this paper we consider the inferential aspect of the nonparametric estimation of a conditional function g(x; φ) = E[φ(Xt)|Xt,m], where Xt,m represents the vector containing the m conditioning lagged values of the series. Here φ is an arbitrary measurable function. The local polynomial estimator of order p is used for the estimation of the function g, and of its partial derivatives up to a total order p. We consider α-mixing processes, and we propose the use of a particular resampling method, the local polynomial bootstrap, for the approximation of the sampling distribution of the estimator. After analyzing the consistency of the proposed method, we present a simulation study which gives evidence of its finite sample behaviour
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
In this paper we consider the inferential aspect of the nonparametric estimation of a conditional fu...
AbstractWe consider the estimation of the multivariate regression function m(x1, …, xd) = E[ψ(Yd)|X1...
The local likelihood estimator and a semiparametric bootstrap method are studied under weaker condit...
International audienceIn this paper we study a local polynomial estimator of the regression function...
We propose a modi cation of local polynomial time series regression estimators that improves ef ci...
We propose a modification of local polynomial time series fitting which improves the efficiency of t...
Local polynomial fitting has many exciting statistical properties which where established under i.i....
In this paper we consider a class of dynamic models in which both the conditional mean and the condi...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
A nonparametric bootstrap procedure is proposed for stochastic processes which follow a gen-eral aut...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We study the estimation of the mean function of a continuous-time stochastic process and i...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
In this paper we consider the inferential aspect of the nonparametric estimation of a conditional fu...
AbstractWe consider the estimation of the multivariate regression function m(x1, …, xd) = E[ψ(Yd)|X1...
The local likelihood estimator and a semiparametric bootstrap method are studied under weaker condit...
International audienceIn this paper we study a local polynomial estimator of the regression function...
We propose a modi cation of local polynomial time series regression estimators that improves ef ci...
We propose a modification of local polynomial time series fitting which improves the efficiency of t...
Local polynomial fitting has many exciting statistical properties which where established under i.i....
In this paper we consider a class of dynamic models in which both the conditional mean and the condi...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
A nonparametric bootstrap procedure is proposed for stochastic processes which follow a gen-eral aut...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We study the estimation of the mean function of a continuous-time stochastic process and i...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...