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Panel data nowcasting: The case of price–earnings ratios

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Listed:
  • Andrii Babii
  • Ryan T. Ball
  • Eric Ghysels
  • Jonas Striaukas

Abstract

The paper uses structured machine learning regressions for nowcasting with panel data consisting of series sampled at different frequencies. Motivated by the problem of predicting corporate earnings for a large cross‐section of firms with macroeconomic, financial, and news time series sampled at different frequencies, we focus on the sparse‐group LASSO regularization which can take advantage of the mixed‐frequency time series panel data structures. Our empirical results show the superior performance of our machine learning panel data regression models over analysts' predictions, forecast combinations, firm‐specific time series regression models, and standard machine learning methods.

Suggested Citation

  • Andrii Babii & Ryan T. Ball & Eric Ghysels & Jonas Striaukas, 2024. "Panel data nowcasting: The case of price–earnings ratios," Journal of Applied Econometrics, John Wiley & Sons, Ltd., vol. 39(2), pages 292-307, March.
  • Handle: RePEc:wly:japmet:v:39:y:2024:i:2:p:292-307
    DOI: 10.1002/jae.3028
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    References listed on IDEAS

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