We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mixing stationary processes {(Yi,Xi)}. We establish a strong uniform consistency rate for the Bahadur representation of estimators of the regression function and its derivatives. These results are fundamental for statistical inference and for applications that involve plugging in such estimators into other functionals where some control over higher order terms are required. We apply our results to the estimation of an additive M-regression model
We study properties of local additive estimation based on the smooth backfitting estimator by Mammen...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
This is a preprint of an article submitted for consideration in the Communications in Statistics, Th...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
Under the condition that the observations, which come from a high-dimensional population (X, Y), are...
AbstractWe consider the estimation of multivariate regression functions r(x1,…,xd) and their partial...
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....
The asymptotic bias and variance of a general class of local polynomial estimators of M-regression f...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
AbstractWe consider the estimation of the multivariate regression function m(x1, …, xd) = E[ψ(Yd)|X1...
We consider the estimation of multivariate regression functions r(x1,...,xd) and their partial deriv...
AbstractLet (X1, Y1),…, (Xn, Yn) be i.i.d. rv's and let m(x) = E(Y|X = x) be the regression curve of...
We study properties of local additive estimation based on the smooth backfitting estimator by Mammen...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
This is a preprint of an article submitted for consideration in the Communications in Statistics, Th...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
We use local polynomial fitting to estimate the nonparametric M-regression function for strongly mix...
Under the condition that the observations, which come from a high-dimensional population (X, Y), are...
AbstractWe consider the estimation of multivariate regression functions r(x1,…,xd) and their partial...
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....
The asymptotic bias and variance of a general class of local polynomial estimators of M-regression f...
summary:Local polynomials are used to construct estimators for the value $m(x_{0})$ of the regressio...
AbstractWe consider the estimation of the multivariate regression function m(x1, …, xd) = E[ψ(Yd)|X1...
We consider the estimation of multivariate regression functions r(x1,...,xd) and their partial deriv...
AbstractLet (X1, Y1),…, (Xn, Yn) be i.i.d. rv's and let m(x) = E(Y|X = x) be the regression curve of...
We study properties of local additive estimation based on the smooth backfitting estimator by Mammen...
Consider the fixed regression model with random observation error that follows an AR(1) correlation...
This is a preprint of an article submitted for consideration in the Communications in Statistics, Th...