The familiar Box and Jenkins method used to build prediction intervals for AR processes neglects the variability due to the estimation of model order and parameters. The purpose of the present paper is to assess the robustness of an approach that takes into account this additional uncertainty when the assumption that the underlying process is AR is not satisfied
The traditional Box-Jenkins approach to obtaining prediction intervals for stationary time seres ass...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
We introduce a new bootstrap strategy to obtain prediction intervals inARIMA (P,d,l) processes. Its ...
The familiar Box and Jenkins method used to build prediction intervals for AR processes neglects the...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...
Methods of improving the coverage of Box-Jenkins prediction intervals for linear autoregressive mode...
A new method is proposed to obtain interval forecasts for autoregressive models taking into account ...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
In this paper, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
We construct prediction intervals for the observations of first-order autoregressive processes when ...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
This article concerns the construction of prediction intervals for time series models. The estimativ...
The traditional Box-Jenkins approach to obtaining prediction intervals for stationary time seres ass...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
We introduce a new bootstrap strategy to obtain prediction intervals inARIMA (P,d,l) processes. Its ...
The familiar Box and Jenkins method used to build prediction intervals for AR processes neglects the...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...
Methods of improving the coverage of Box-Jenkins prediction intervals for linear autoregressive mode...
A new method is proposed to obtain interval forecasts for autoregressive models taking into account ...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
In this paper, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
We construct prediction intervals for the observations of first-order autoregressive processes when ...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
In this study, we propose a new bootstrap strategy to obtain prediction intervals for autoregressive...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
This article concerns the construction of prediction intervals for time series models. The estimativ...
The traditional Box-Jenkins approach to obtaining prediction intervals for stationary time seres ass...
This paper examines the performance of prediction intervals based on bootstrap for threshold autoreg...
We introduce a new bootstrap strategy to obtain prediction intervals inARIMA (P,d,l) processes. Its ...