We study a semi-varying coefficient model where the regressors are generated by the multivariate unit root I(1) processes. The influence of the explanatory vectors on the response variable satisfies the semiparametric partially linear structure with the nonlinear component being functional coefficients. A semiparametric estimation methodology with the first-stage local polynomial smoothing is applied to estimate both the constant coefficients in the linear component and the functional coefficients in the nonlinear component. The asymptotic distribution theory for the proposed semiparametric estimators is established under some mild conditions, from which both the parametric and nonparametric estimators are shown to enjoy the well-known supe...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
© 2009 Taylor & FrancisA partially time-varying coefficient model is introduced to characterise the ...
This article deals with statistical inferences based on the varying-coefficient models proposed by H...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...
AbstractVarying coefficient models are useful extensions of the classical linear models. Under the c...
This paper studies the estimation of a varying-coefficient partially linear regression model which i...
AbstractThis paper studies the estimation of a varying-coefficient partially linear regression model...
This paper studies a new class of semiparametric dynamic panel data models, in which some coefficien...
In this paper we propose a general series method to estimate a semiparametric partially linear varyi...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...
This paper studies a general class of nonlinear varying coefficient time series mod-els with possibl...
AbstractThe procedures for estimations of the parametric component and the nonparametric component o...
This paper studies the asymptotic properties of a nonstationary partially linear regression model. I...
The complexity of semiparametric models poses new challenges to sta-tistical inference and model sel...
This paper is concerned with semiparametric efficient estimation of a generalized partially linear v...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
© 2009 Taylor & FrancisA partially time-varying coefficient model is introduced to characterise the ...
This article deals with statistical inferences based on the varying-coefficient models proposed by H...
Varying coefficient models are useful extensions of the classical linear models. Under the condition...
AbstractVarying coefficient models are useful extensions of the classical linear models. Under the c...
This paper studies the estimation of a varying-coefficient partially linear regression model which i...
AbstractThis paper studies the estimation of a varying-coefficient partially linear regression model...
This paper studies a new class of semiparametric dynamic panel data models, in which some coefficien...
In this paper we propose a general series method to estimate a semiparametric partially linear varyi...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...
This paper studies a general class of nonlinear varying coefficient time series mod-els with possibl...
AbstractThe procedures for estimations of the parametric component and the nonparametric component o...
This paper studies the asymptotic properties of a nonstationary partially linear regression model. I...
The complexity of semiparametric models poses new challenges to sta-tistical inference and model sel...
This paper is concerned with semiparametric efficient estimation of a generalized partially linear v...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
© 2009 Taylor & FrancisA partially time-varying coefficient model is introduced to characterise the ...
This article deals with statistical inferences based on the varying-coefficient models proposed by H...