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Improved nonparametric confidence intervals in time series regressions

机译:改善时间序列回归中的非参数置信区间

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Confidence intervals in econometric time series regressions suffer from notorious coverage problems. This is especially true when the dependence in the data is noticeable and sample sizes are small to moderate, as is often the case in empirical studies. This article suggests using the studentized block bootstrap and discusses practical issues such as the choice of the block size. A particular data-dependent method is proposed to automate the method. As a side note, it is pointed out that symmetric confidence intervals are preferred over equal-tailed ones, as they exhibit improved coverage accuracy. The improvements in small sample performance are supported by a simulation study.
机译:计量经济时间序列回归中的置信区间存在臭名昭著的覆盖率问题。当数据中的相关性非常明显且样本量从小到中等时(尤其是经验研究中的情况),尤其如此。本文建议使用学生化的块引导程序,并讨论诸如块大小的选择之类的实际问题。提出了一种特定于数据的方法来使该方法自动化。作为附带说明,要指出对称置信区间比等尾区间更可取,因为它们显示出提高的覆盖范围准确性。模拟研究支持小样本性能的提高。

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