Projecting Unemployment Durations: A Factor-Flows Simulation Approach with Application to the Covid-19 Recession

24 Pages Posted: 24 Jul 2020 Last revised: 28 Apr 2023

See all articles by Gabriel Chodorow-Reich

Gabriel Chodorow-Reich

Harvard University Department of Economics

John Coglianese

Independent

Date Written: July 2020

Abstract

We propose a three-step factor-flows simulation-based approach to forecast the duration distribution of unemployment. Step 1: estimate individual transition hazards across employment, temporary layoff, permanent layoff, quitter, entrant, and out of the labor force, with each hazard depending on an aggregate component as well as an individual's labor force history. Step 2: relate the aggregate components to the overall unemployment rate using a factor model. Step 3: combine the individual duration dependence, factor structure, and an auxiliary forecast of the unemployment rate to simulate a panel of individual labor force histories. Applying our approach to the July Blue Chip forecast of the COVID-19 recession, we project that 1.6 million workers laid off in April 2020 remain unemployed six months later. Total long-term unemployment rises thereafter and eventually reaches more 4.5 million individuals unemployed for more than 26 weeks and almost 2 million individuals unemployed for more than 46 weeks. Long-term unemployment rises even more in a more pessimistic recovery scenario, but remains below the level in the Great Recession due to a high amount of labor market churn.

Suggested Citation

Chodorow-Reich, Gabriel and Coglianese, John, Projecting Unemployment Durations: A Factor-Flows Simulation Approach with Application to the Covid-19 Recession (July 2020). NBER Working Paper No. w27566, Available at SSRN: https://ssrn.com/abstract=3658862

Gabriel Chodorow-Reich (Contact Author)

Harvard University Department of Economics ( email )

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HOME PAGE: http://scholar.harvard.edu/chodorow-reich

John Coglianese

Independent

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