In this paper we study time-varying coe±cient models with time trend function and serially correlated errors to characterize nonlinear, nonstationary and trending phenomenon in time se- ries. Compared with the Nadaraya-Watson method, the local linear approach is developed to estimate the time trend and coe±cient functions. The consistency of the proposed estimators is obtained without any specification of the error distribution and the asymptotic normality of the proposed estimators is established under the α-mixing conditions. The explicit expressions of the asymptotic bias and variance are given for both estimators. The asymptotic bias is just in a regular nonparametric form but the asymptotic variance is shared by parametric estimato...
We provide a new asymptotic theory for local time density estimation for a general class of function...
This paper offers a new method for estimation and forecasting of the linear and nonlinear time serie...
We deal with nonparametric estimation in a nonlinear cointegration model whose regressor and depende...
In this paper we study time-varying coe±cient models with time trend function and serially correlat...
This paper studies a general class of nonlinear varying coefficient time series models with possible ...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...
This paper is concerned with developing a non-parametric time-varying coefficient model with fixed e...
AbstractConsider the model yj = ƒ(jn) + εj, j = 1,…, n, where the yj's are observed, ƒ is a smooth b...
A time-varying autoregression is considered with a similarity-based coefficient and possible drift. I...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve smo...
A new multivariate random walk model with slowly changing parameters is introduced and investigated ...
We consider the problem of testing for long-range dependence in time-varying coefficient regression ...
This paper describes a moments estimator for a standard state-space model with coefficients generate...
Linear cointegration is known to have the important property of invariance under temporal translatio...
We provide a new asymptotic theory for local time density estimation for a general class of function...
This paper offers a new method for estimation and forecasting of the linear and nonlinear time serie...
We deal with nonparametric estimation in a nonlinear cointegration model whose regressor and depende...
In this paper we study time-varying coe±cient models with time trend function and serially correlat...
This paper studies a general class of nonlinear varying coefficient time series models with possible ...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...
This paper is concerned with developing a non-parametric time-varying coefficient model with fixed e...
AbstractConsider the model yj = ƒ(jn) + εj, j = 1,…, n, where the yj's are observed, ƒ is a smooth b...
A time-varying autoregression is considered with a similarity-based coefficient and possible drift. I...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve smo...
A new multivariate random walk model with slowly changing parameters is introduced and investigated ...
We consider the problem of testing for long-range dependence in time-varying coefficient regression ...
This paper describes a moments estimator for a standard state-space model with coefficients generate...
Linear cointegration is known to have the important property of invariance under temporal translatio...
We provide a new asymptotic theory for local time density estimation for a general class of function...
This paper offers a new method for estimation and forecasting of the linear and nonlinear time serie...
We deal with nonparametric estimation in a nonlinear cointegration model whose regressor and depende...