2016
DOI: 10.1080/07474938.2016.1222232
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Wavelet energy ratio unit root tests

Abstract: This article uses wavelet theory to propose a frequency domain nonparametric and tuning parameter-free family of unit root tests. The proposed test exploits the wavelet power spectrum of the observed series and its fractional partial sum to construct a test of the unit root based on the ratio of the resulting scaling energies. The proposed statistic enjoys good power properties and is robust to severe size distortions even in the presence of serially correlated MA(1) errors with a highly negative moving averag… Show more

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Cited by 4 publications
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“…Although the wavelet unit root test has a considerable advantage in testing the unit root behavior of the time series, the test suffers from size distortions when the series under examination contains deterministic dynamics and moving average (MA) serial correlations with a high negative root [4] [for more details, see Eroğlu and Soybilgen (2018) and Trokić (2019)]. This shortcoming leads us to apply another nonlinear unit root test to provide robustness for the findings of the wavelet unit root test.…”
Section: Data and Empirical Findingsmentioning
confidence: 99%
“…Although the wavelet unit root test has a considerable advantage in testing the unit root behavior of the time series, the test suffers from size distortions when the series under examination contains deterministic dynamics and moving average (MA) serial correlations with a high negative root [4] [for more details, see Eroğlu and Soybilgen (2018) and Trokić (2019)]. This shortcoming leads us to apply another nonlinear unit root test to provide robustness for the findings of the wavelet unit root test.…”
Section: Data and Empirical Findingsmentioning
confidence: 99%