We establish the asymptotic theory for the estimation of adaptive varying-coefficient linear models. More specifically, we show that the estimator of the index parameter is root-n-consistent. It differs from the locally optimal estimator that has been proposed in the literature with a prerequisite that the estimator is within a n(-delta)-distance of the true value. To this end, we establish two fundamental lemmas for the asymptotic properties of the estimators of parametric components in a general semiparametric setting. Furthermore, the estimation for the coefficient functions is asymptotically adaptive to the unknown index parameter. Asymptotic properties are derived using the empirical process theory for strictly stationary beta-mixing p...
We study a semi-varying coefficient model where the regressors are generated by the multivariate uni...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...
We establish the asymptotic theory for the estimation of adaptive varying coefficient linear models....
We have established the asymptotic theory for the estimation of adaptive varying-coe�cient linear mo...
Adaptive varying-coefficient linear models for stochastic processes: asymptotic theory Article (Acce...
We propose a semiparametric estimator for varying coefficient models when the regressors in the nonp...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
In this paper, the adaptive estimation for varying coefficient models proposed by Chen, Wang, and Ya...
In this article, a novel adaptive estimation is proposed for varying coefficient models. Unlike the ...
Varying-coefficient models are a useful extension of the classical linear models. The appeal of thes...
This paper considers statistical inference for the heteroscedastic varying coefficient model. We pro...
In the present paper we consider the varying coefficient model which represents a useful tool for ex...
An asymptotic theory for estimation and inference in adaptive learning models with strong mixing reg...
The asymptotic theory of estimators obtained from estimating functions is re-viewed and some new res...
We study a semi-varying coefficient model where the regressors are generated by the multivariate uni...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...
We establish the asymptotic theory for the estimation of adaptive varying coefficient linear models....
We have established the asymptotic theory for the estimation of adaptive varying-coe�cient linear mo...
Adaptive varying-coefficient linear models for stochastic processes: asymptotic theory Article (Acce...
We propose a semiparametric estimator for varying coefficient models when the regressors in the nonp...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
In this paper, the adaptive estimation for varying coefficient models proposed by Chen, Wang, and Ya...
In this article, a novel adaptive estimation is proposed for varying coefficient models. Unlike the ...
Varying-coefficient models are a useful extension of the classical linear models. The appeal of thes...
This paper considers statistical inference for the heteroscedastic varying coefficient model. We pro...
In the present paper we consider the varying coefficient model which represents a useful tool for ex...
An asymptotic theory for estimation and inference in adaptive learning models with strong mixing reg...
The asymptotic theory of estimators obtained from estimating functions is re-viewed and some new res...
We study a semi-varying coefficient model where the regressors are generated by the multivariate uni...
This thesis examines the basic asymptotic properties of various stochastic adaptive systems for iden...
In this paper we consider partially linear varying coefficient models. We provide semiparametric eff...