Publikationsansicht

Testing time-series stationarity against an alternative whose mean is periodic (2001)

Abstract
We develop a test of the null hypothesis that an observed time series is a realization of a strictly stationary random process. Our test is based on the result that the kth value of the discrete Fourier transform of a sample frame has a zero mean under the null hypothesis. The test that we develop will have considerable power against an important form of nonstationarity hitherto not considered in the mainstream econometric time-series literature, that is, where the mean of a time series is periodic with random variation in its periodic structure. The size and power properties of the test are: investigated and its applicability to real-world problems is demonstrated by application to three: economic data sets.

Details der Publikation
Download http://espace.library.uq.edu.au/view/UQ:114614
Herausgeber Cambridge Univ Press
Archiv ARROW Discovery Service (Australia)
Keywords Economics, autoregressive (AR) process, discrete Fourier transform, randomly modulated periodic process, seasonality, stationarity, Unit-root, Hypothesis, Regression, Trends
Typ journal article
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