Abstract
The U.S. prewar output series exhibit smaller shock-persistence than postwar-series. Some studies suggest this may be due to linear interpolation used to generate missing prewar data. Monte Carlo simulations that support this view generate large standard-errors, making such inference imprecise. We assess analytically the effect of linear interpolation on a nonstationary process. We find that interpolation indeed reduces shock-persistence, but the interpolated series can still exhibit greater shock-persistence than a pure random walk. Moreover, linear interpolation makes the series periodically nonstationary, with parameters of the data generating process and the length of the interpolation time-segments affecting shock-persistence in conflicting ways.
Original language | English |
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Article number | 110386 |
Journal | Economics Letters |
Volume | 213 |
DOIs | |
State | Published - Apr 2022 |
Keywords
- Linear interpolation
- Nonstationary series
- Periodic nonstationarity
- Prewar US time series
- Random walk
- Shock-persistence
- Stationary series
All Science Journal Classification (ASJC) codes
- Finance
- Economics and Econometrics