The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on the bootstrap is considered. Three methods are considered for countering the small-sample bias of least-squares estimation for processes which have roots close to the unit circle: a bootstrap bias-corrected OLS estimator; the use of the Roy-Fuller estimator in place of OLS; and the use of the Andrews-Chen estimator in place of OLS. All three methods of bias correction yield superior results to the bootstrap in the absence of bias correction. Of the three correction methods, the bootstrap prediction intervals based on the Roy-Fuller estimator are generally superior to the other two. The small-sample performance of bootstrap prediction interva...
This article concerns the construction of prediction intervals for time series models. The estimativ...
In this paper we propose a bootstrap resampling scheme to construct prediction intervals for future ...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...
A new method is proposed to obtain interval forecasts for autoregressive models taking into account ...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
Methods of improving the coverage of Box-Jenkins prediction intervals for linear autoregressive mode...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
The familiar Box and Jenkins method used to build prediction intervals for AR processes neglects the...
The traditional Box-Jenkins approach to obtaining prediction intervals for stationary time seres ass...
A new bootstrap method combined with the stationary bootstrap of Politis and Romano (1994) and the c...
In this paper we propose bootstrap methods for constructing nonparametric prediction intervals for a...
Traditional Box-Jenkins prediction intervals perform poorly when the innovations are not Gaussian. N...
This article concerns the construction of prediction intervals for time series models. The estimativ...
In this paper we propose a bootstrap resampling scheme to construct prediction intervals for future ...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...
A new method is proposed to obtain interval forecasts for autoregressive models taking into account ...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
Methods of improving the coverage of Box-Jenkins prediction intervals for linear autoregressive mode...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
The familiar Box and Jenkins method used to build prediction intervals for AR processes neglects the...
The traditional Box-Jenkins approach to obtaining prediction intervals for stationary time seres ass...
A new bootstrap method combined with the stationary bootstrap of Politis and Romano (1994) and the c...
In this paper we propose bootstrap methods for constructing nonparametric prediction intervals for a...
Traditional Box-Jenkins prediction intervals perform poorly when the innovations are not Gaussian. N...
This article concerns the construction of prediction intervals for time series models. The estimativ...
In this paper we propose a bootstrap resampling scheme to construct prediction intervals for future ...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...