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Bootstrap prediction intervals for autoregressive time series

机译:自回归时间序列的自举预测间隔

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摘要

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 intervals based on the Roy–Fuller estimator are investigated when the order of the AR model is unknown, and has to be determined using an information criterion.
机译:考虑了基于引导程序的高度持久性自回归(AR)时间序列的间隔预测的计算。对于根源接近单位圆的过程,考虑了三种方法来抵消最小二乘估计的小样本偏差:自举偏差校正的OLS估计器;使用Roy-Fuller估计器代替OLS;并使用Andrews-Chen估算器代替OLS。在没有偏差校正的情况下,所有三种偏差校正方法均能获得优于自举的优异结果。在这三种校正方法中,基于Roy-Fuller估计量的自举预测间隔通常优于其他两种。当AR模型的阶数未知时,必须研究基于Roy-Fuller估计量的自举预测间隔的小样本性能,并且必须使用信息准则来确定。

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