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Recession Detection in Japan using Labor Market Data

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  • Neha Sikand
  • Rongjin Zhang

Abstract

Recession indicators are often viewed as U.S. specific, raising the question of whether labor market-based rules such as the Sahm Rule and the Michez Rule can reliably detect recessions in other countries. To answer this, we evaluate whether such rules can be adapted to Japan by calibrating thresholds and smoothing parameters to Japanese labor market data. We construct a large set of 95,832 recession indicators combining unemployment and vacancy data. The selected classifiers are statistically perfect as they identify all 11 historical recessions in the 1970-2021 training period without generating any false positives. Among these, 193 classifiers lie on the anticipation-precision frontier. Restricting attention to the high-precision segment yields six classifiers with a standard deviation of detection errors below 3 months. The selected classifier ensemble signals recessions, on average, 0.06 months after their true onset. Overall, these findings suggest that slack-based labor market rules provide a general framework for improving real-time recession detection across countries.

Suggested Citation

  • Neha Sikand & Rongjin Zhang, 2026. "Recession Detection in Japan using Labor Market Data," Papers 2606.00948, arXiv.org.
  • Handle: RePEc:arx:papers:2606.00948
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    File URL: http://arxiv.org/pdf/2606.00948
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