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Business forecasting during the pandemic.

John O'Trakoun1

  • 1Federal Reserve Bank of Richmond, PO Box 27622, Richmond, VA 23261 USA.

Business Economics (Cleveland, Ohio)
|June 22, 2022
PubMed
Summary

Business forecasting models faced significant challenges due to the COVID-19 pandemic. Projection-based statistical models proved more resilient than iteration-based forecasts during this period of economic uncertainty.

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Area of Science:

  • Economics
  • Econometrics
  • Business Analytics

Background:

  • The COVID-19 pandemic introduced unprecedented economic uncertainty, challenging established business forecasting methods.
  • Traditional statistical models used by business economists were tested by the pandemic's disruptive impact.

Purpose of the Study:

  • To retrospectively evaluate the resilience of common statistical models used in business forecasting during the COVID-19 pandemic shock.
  • To identify which forecasting approaches were most robust amidst elevated economic uncertainty.

Main Methods:

  • Retrospective evaluation of workhorse statistical models employed by business economists.
  • Comparative analysis of projection-based versus iteration-based forecasting approaches.
  • Assessment of models incorporating macroeconomic data and alternative high-frequency data.

Main Results:

  • Projection-based forecasting methods demonstrated greater resilience to the pandemic shock compared to iteration-based methods.
  • The pandemic significantly impacted forecast accuracy across models utilizing macroeconomic data.
  • Inclusion of high-frequency data did not consistently enhance forecast performance.

Conclusions:

  • Projection-based models offer a more resilient framework for business forecasting in times of severe economic disruption.
  • Further research is required to determine the precise impact of high-frequency data on business planning and forecast accuracy post-pandemic.
Keywords:
Business forecastingCOVID-19Economic forecastingPandemic

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