In this paper we introduce new estimators of the coefficient functions in the varying coefficient regression model. The proposed estimators are obtained by projecting the vector of the full-dimensional kernel-weighted local polynomial estimators of the coefficient functions onto a Hilbert space with a suitable norm. We provide a backfitting algorithm to compute the estimators. We show that the algorithm converges at a geometric rate under weak conditions. We derive the asymptotic distributions of the estimators and show that the estimators have the oracle properties. This is done for the general order of local polynomial fitting and for the estimation of the derivatives of the coefficient functions, as well as the coefficient functions them...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
Masry (1996b) provides estimation bias and variance expression for a general local polynomial kernel...
In this paper a new additive regression technique is developed for response variables that take valu...
In this paper we introduce new estimators of the coefficient functions in the varying coefficient re...
In this paper we introduce new estimators of the coefficient functions in the varying coefficient re...
This paper deals with statistical inferences based on the generallized varying-coefficient models pr...
The aim of this thesis is to provide an overview of the varying coefficient mod- els - a class of re...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...
By allowing the regression coefficients to change with certain covariates, the class of varying coef...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...
We consider a class of nonparametric marginal models in which the regres-sion coefficients are assum...
Varying-coefficient models are a useful extension of the classical linear models. The appeal of thes...
This article deals with statistical inferences based on the varying-coefficient models proposed by H...
The varying coefficient model is a useful alternative to the classical linear model, since the forme...
AbstractVarying coefficient models are useful extensions of the classical linear models. Under the c...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
Masry (1996b) provides estimation bias and variance expression for a general local polynomial kernel...
In this paper a new additive regression technique is developed for response variables that take valu...
In this paper we introduce new estimators of the coefficient functions in the varying coefficient re...
In this paper we introduce new estimators of the coefficient functions in the varying coefficient re...
This paper deals with statistical inferences based on the generallized varying-coefficient models pr...
The aim of this thesis is to provide an overview of the varying coefficient mod- els - a class of re...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...
By allowing the regression coefficients to change with certain covariates, the class of varying coef...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...
We consider a class of nonparametric marginal models in which the regres-sion coefficients are assum...
Varying-coefficient models are a useful extension of the classical linear models. The appeal of thes...
This article deals with statistical inferences based on the varying-coefficient models proposed by H...
The varying coefficient model is a useful alternative to the classical linear model, since the forme...
AbstractVarying coefficient models are useful extensions of the classical linear models. Under the c...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
Masry (1996b) provides estimation bias and variance expression for a general local polynomial kernel...
In this paper a new additive regression technique is developed for response variables that take valu...