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Testing Covariance Stationarity
Authors:Zhijie Xiao  Luiz Renato Lima
Institution:  a Department of Economics, Boston College, Chestnut Hill, MA, USA b School of Economics and Management, Tsinghua University, Beijing, China c Graduate School of Economics, Getulio Vargas Foundation, Rio de Janeiro, Brazil
Abstract:In this paper, we show that the widely used stationarity tests such as the Kwiatkowski Phillips, Schmidt, and Shin (KPSS) test have power close to size in the presence of time-varying unconditional variance. We propose a new test as a complement of the existing tests. Monte Carlo experiments show that the proposed test possesses the following characteristics: (i) in the presence of unit root or a structural change in the mean, the proposed test is as powerful as the KPSS and other tests; (ii) in the presence of a changing variance, the traditional tests perform badly whereas the proposed test has high power comparing to the existing tests; (iii) the proposed test has the same size as traditional stationarity tests under the null hypothesis of stationarity. An application to daily observations of return on U.S. Dollar/Euro exchange rate reveals the existence of instability in the unconditional variance when the entire sample is considered, but stability is found in subsamples.
Keywords:Asymptotic theory  KPSS  Stationarity testing  Time-varying variance
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