The local linear regression technique is applied to estimation of functional-coefficient regression models for time series data. The models include threshold autoregressive models and functional-coefficient autoregressive models as special cases but with the added advantages such as depicting finer structure of the underlying dynamics and better postsample forecasting performance. Also proposed are a new bootstrap test for the goodness of fit of models and a bandwidth selector based on newly defined cross-validatory estimation for the expected forecasting errors. The proposed methodology is data-analytic and of sufficient flexibility to analyze complex and multivariate nonlinear structures without suffering from the “curse of dimensionality...
The problem of prediction in time series using nonparametric functional techniques is considered. An...
This note deals with the study of a functional linear model for time series prediction which combine...
In this paper, the functional-coefficient partially linear regression (FCPLR) model is proposed by c...
The local linear regression technique is applied to estimation of functional-coefficient regression ...
The local linear regression technique is applied to estimation of functional-coefficient regression ...
The local linear regression technique is applied to estimation of functional-coefficient regression ...
We apply the local linear regression technique for estimation of functional-cefficient regression mo...
ABSTRACT. We propose a global smoothing method based on polynomial splines for the esti-mation of fu...
ABSTRACT. We propose a global smoothing method based on polynomial splines for the es-timation of fu...
We propose a global smoothing method based on polynomial splines for the estimation of functional co...
We propose a global smoothing method based on polynomial splines for the estimation of functional co...
This paper introduces a new class of functional-coefficient predictive regression models, where the ...
The functional-coefficient autoregressive (FCAR) model is a useful structure for reducing the size ...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
The problem of prediction in time series using nonparametric functional techniques is considered. An...
This note deals with the study of a functional linear model for time series prediction which combine...
In this paper, the functional-coefficient partially linear regression (FCPLR) model is proposed by c...
The local linear regression technique is applied to estimation of functional-coefficient regression ...
The local linear regression technique is applied to estimation of functional-coefficient regression ...
The local linear regression technique is applied to estimation of functional-coefficient regression ...
We apply the local linear regression technique for estimation of functional-cefficient regression mo...
ABSTRACT. We propose a global smoothing method based on polynomial splines for the esti-mation of fu...
ABSTRACT. We propose a global smoothing method based on polynomial splines for the es-timation of fu...
We propose a global smoothing method based on polynomial splines for the estimation of functional co...
We propose a global smoothing method based on polynomial splines for the estimation of functional co...
This paper introduces a new class of functional-coefficient predictive regression models, where the ...
The functional-coefficient autoregressive (FCAR) model is a useful structure for reducing the size ...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
The problem of prediction in time series using nonparametric functional techniques is considered. An...
This note deals with the study of a functional linear model for time series prediction which combine...
In this paper, the functional-coefficient partially linear regression (FCPLR) model is proposed by c...