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Detecting common breaks in the means of high dimensional cross-dependent panels
[Structural breaks in panel data: large number of panels and short length time series]

Author

Listed:
  • Lajos Horváth
  • Zhenya Liu
  • Gregory Rice
  • Yuqian Zhao

Abstract

SummaryThe problem of detecting change points in the mean of high dimensional panel data with potentially strong cross-sectional dependence is considered. Under the assumption that the cross-sectional dependence is captured by an unknown number of common factors, a new CUSUM-type statistic is proposed. We derive its asymptotic properties under three scenarios depending on to what extent the common factors are asymptotically dominant. With panel data consisting of N cross sectional time series of length T, the asymptotic results hold under the mild assumption that , with an otherwise arbitrary relationship between N and T, allowing the results to apply to most panel data examples. Bootstrap procedures are proposed to approximate the sampling distribution of the test statistics. A Monte Carlo simulation study showed that our test outperforms several other existing tests in finite samples in a number of cases, particularly when N is much larger than T. The practical application of the proposed results are demonstrated with real data applications to detecting and estimating change points in the high dimensional FRED-MD macroeconomic data set.

Suggested Citation

  • Lajos Horváth & Zhenya Liu & Gregory Rice & Yuqian Zhao, 2022. "Detecting common breaks in the means of high dimensional cross-dependent panels [Structural breaks in panel data: large number of panels and short length time series]," The Econometrics Journal, Royal Economic Society, vol. 25(2), pages 362-383.
  • Handle: RePEc:oup:emjrnl:v:25:y:2022:i:2:p:362-383.
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