4.6 Article

Unit root tests allowing for a break in the trend function at an unknown time under both the null and alternative hypotheses

Journal

JOURNAL OF ECONOMETRICS
Volume 148, Issue 1, Pages 1-13

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.jeconom.2008.08.019

Keywords

Structural change; Pre-test; Trend function; Integrated processes; Hypothesis testing

Funding

  1. National Science Foundation [SES-0649350]

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Perron [Perron, P., 1989. The great crash, the oil price shock and the unit root hypothesis. Econometrica 57, 1361-1401] introduced a variety of unit root tests that are valid when a break in the trend function of a time series is present. The motivation was to devise testing procedures that were invariant to the magnitude of the shift in level and/or slope. In particular, if a change is present it is allowed under both the null and alternative hypotheses. This analysis was carried under the assumption of a known break date. The subsequent literature aimed to devise testing procedures valid in the case of an unknown break date. However, in doing so, most of the literature and, in particular the commonly used test of Zivot and Andrews [Zivot, E., Andrews, D.W.K., 1992. Further evidence on the great crash, the oil price shock and the unit root hypothesis. journal of Business and Economic Statistics 10, 251-270], assumed that if a break occurs, it does so only under the alternative hypothesis of stationarity. This is undesirable since (a) it imposes an asymmetric treatment when allowing for a break, so that the test may reject when the noise is integrated but the trend is changing; (b) if a break is present, this information is not exploited to improve the power of the test. In this paper, we propose a testing procedure that addresses both issues. It allows a break under both the null and alternative hypotheses and, when a break is present, the limit distribution of the test is the same as in the case of a known break date, thereby allowing increased power while maintaining the correct size. Simulation experiments confirm that our procedure offers an improvement over commonly used methods in small samples. (C) 2008 Elsevier B.V. All rights reserved.

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