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Asymptotic F test in Regressions with Observations Collected at High Frequency over Long Span

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  • Pellatt , Daniel
  • Sun, Yixiao

Abstract

This paper proposes tests of linear hypotheses when the variables may be continuous-time processes with observations collected at a high sampling frequency over a long span. Utilizing series long run variance (LRV) estimation in place of the traditional kernel LRV estimation, we develop easy-to-implement and more accurate F tests in both stationary and nonstationary environments. The nonstationary environment accommodates endogenous regressors that are general semimartinglales. The F tests can be implemented in exactly the same way as in the usual discrete-time setting. The F tests are, therefore, robust to the continuous-time or discrete-time nature of the data. Simulations demonstrate the improved size accuracy and competitive power of the F tests relative to existing continuous-time testing procedures and their improved versions. The F tests are of practical interest as recent work by Chang et al. (2018) demonstrates that traditional inference methods can become invalid and produce spurious results when continuous-time processes are observed on finer grids over a long span.

Suggested Citation

  • Pellatt , Daniel & Sun, Yixiao, 2020. "Asymptotic F test in Regressions with Observations Collected at High Frequency over Long Span," University of California at San Diego, Economics Working Paper Series qt19f0d9wz, Department of Economics, UC San Diego.
  • Handle: RePEc:cdl:ucsdec:qt19f0d9wz
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    References listed on IDEAS

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    Keywords

    Social and Behavioral Sciences; continuous time model; F distribution; high frequency regression; long run variance estimation;
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