This paper presents an overview of the existing literature on the nonparametric local polynomial (LPR) estimator of the regression function and its derivatives when the observations are dependent. When the errors of the regression model are correlated and follow an ARMA process, Vilar-Fernández and Francisco-Fernández (2002) proposed a modification of the LPR estimator, called the generalized local polynomial (GLPR) estimator, based on, first, transforming the regression model to get uncorrelated errors and then applying the LPR estimator to the new model. Some of the most significant asymptotic properties of these two weighted local estimators, including some guidelines on how to select the bandwidth parameter, are reviewed. Finally...
AbstractIn this paper we propose nonparametric estimates of the regression function and its derivati...
AbstractWe focus on nonparametric multivariate regression function estimation by locally weighted le...
We propose a modi cation of local polynomial time series regression estimators that improves ef ci...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
In this paper, we study the nonparametric estimation of the regression function and its derivatives...
AbstractNonparametric regression estimator based on locally weighted least squares fitting has been ...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
This is a preprint of an article submitted for consideration in the Communications in Statistics, Th...
The typical assumption made in regression analysis with cross-sectional data is that of independent...
We deal with nonparametric estimation in a nonlinear cointegration model whose regressor and depende...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
AbstractThe asymptotic distribution for the local linear estimator in nonparametric regression model...
Theoretical thesis.Bibliography: pages 51-53.1. Introduction -- 2. Notations and assumptions -- 3. R...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
My dissertation consists of six essays which contribute new theoretical resultsto two econometrics f...
AbstractIn this paper we propose nonparametric estimates of the regression function and its derivati...
AbstractWe focus on nonparametric multivariate regression function estimation by locally weighted le...
We propose a modi cation of local polynomial time series regression estimators that improves ef ci...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
In this paper, we study the nonparametric estimation of the regression function and its derivatives...
AbstractNonparametric regression estimator based on locally weighted least squares fitting has been ...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
This is a preprint of an article submitted for consideration in the Communications in Statistics, Th...
The typical assumption made in regression analysis with cross-sectional data is that of independent...
We deal with nonparametric estimation in a nonlinear cointegration model whose regressor and depende...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
AbstractThe asymptotic distribution for the local linear estimator in nonparametric regression model...
Theoretical thesis.Bibliography: pages 51-53.1. Introduction -- 2. Notations and assumptions -- 3. R...
This thesis is focused on local polynomial smoothers of the conditional vari- ance function in a het...
My dissertation consists of six essays which contribute new theoretical resultsto two econometrics f...
AbstractIn this paper we propose nonparametric estimates of the regression function and its derivati...
AbstractWe focus on nonparametric multivariate regression function estimation by locally weighted le...
We propose a modi cation of local polynomial time series regression estimators that improves ef ci...