Local polynomial fitting has many exciting statistical properties which where established under i.i.d. setting. However, the need for non-linea r time series modeling, constructing predictive intervals, understanding divergence of non-linear time series requires the development of the theory of local polynomial fitting for dependent data. In this paper, we study the problem of estimating conditional mean functions and their derivatives via a local polynomial fit. The functions include conditional moments, conditional distribution as well as conditional density functions. Joint asymptotic normality for derivative estimation is established for both strongly mixing and ρ-mixing processes
Let (X-j, Y-j)(j=1)(n) be a realization of a bivariate jointly strictly stationary process. We consi...
We propose a modification of local polynomial time series fitting which improves the efficiency of t...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
Local polynomial fitting has many exciting statistical properties which where established under i.i....
AbstractWe consider the estimation of the multivariate regression function m(x1, …, xd) = E[ψ(Yd)|X1...
AbstractNonparametric regression estimator based on locally weighted least squares fitting has been ...
We present a fully automated framework to estimate derivatives nonparametrically without esti-mating...
In this paper, we study the nonparametric estimation of the regression function and its derivatives...
We present a fully automated framework to estimate derivatives nonparametrically without estimating ...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
In this paper we consider the inferential aspect of the nonparametric estimation of a conditional fu...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
AbstractWe consider the estimation of multivariate regression functions r(x1,…,xd) and their partial...
This thesis examines local polynomial regression. Local polynomial regression is one of non-parametr...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
Let (X-j, Y-j)(j=1)(n) be a realization of a bivariate jointly strictly stationary process. We consi...
We propose a modification of local polynomial time series fitting which improves the efficiency of t...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
Local polynomial fitting has many exciting statistical properties which where established under i.i....
AbstractWe consider the estimation of the multivariate regression function m(x1, …, xd) = E[ψ(Yd)|X1...
AbstractNonparametric regression estimator based on locally weighted least squares fitting has been ...
We present a fully automated framework to estimate derivatives nonparametrically without esti-mating...
In this paper, we study the nonparametric estimation of the regression function and its derivatives...
We present a fully automated framework to estimate derivatives nonparametrically without estimating ...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
In this paper we consider the inferential aspect of the nonparametric estimation of a conditional fu...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
AbstractWe consider the estimation of multivariate regression functions r(x1,…,xd) and their partial...
This thesis examines local polynomial regression. Local polynomial regression is one of non-parametr...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
Let (X-j, Y-j)(j=1)(n) be a realization of a bivariate jointly strictly stationary process. We consi...
We propose a modification of local polynomial time series fitting which improves the efficiency of t...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...