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A hypothesis test using bias-adjusted AR estimators for classifying time series in small samples

机译:使用偏差调整后的AR估计量对小样本中的时间序列进行分类的假设检验

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摘要

A new test of hypothesis for classifying stationary time series based on the bias-adjusted estimators of the fitted autoregressive model is proposed. It is shown theoretically that the proposed test has desirable properties. Simulation results show that when time series are short, the size and power estimates of the proposed test are reasonably good, and thus this test is reliable in discriminating between short-length time series. As the length of the time series increases, the performance of the proposed test improves, but the benefit of bias-adjustment reduces. The proposed hypothesis test is applied to two real data sets: the annual real GDP per capita of six European countries, and quarterly real GDP per capita of five European countries. The application results demonstrate that the proposed test displays reasonably good performance in classifying relatively short time series.
机译:提出了一种新的假设检验方法,该方法基于拟合自回归模型的偏差调整估计量对平稳时间序列进行分类。从理论上证明所提出的测试具有理想的性能。仿真结果表明,当时间序列较短时,所提出的测试的大小和功率估计都相当好,因此该测试在区分短时间序列方面是可靠的。随着时间序列长度的增加,提出的测试的性能会提高,但是偏差调整的好处会减少。拟议的假设检验适用于两个真实数据集:六个欧洲国家的人均年度实际GDP,以及五个欧洲国家的人均季度真实GDP。应用结果表明,该建议的测试在对相对较短的时间序列进行分类时显示出相当好的性能。

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