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Who's at Risk? Effects of Inflation on Unemployment Risk

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  • Hie Joo Ahn
  • Lam Nguyen

Abstract

We empirically investigate the distributional effects of inflation on workers' unemployment tail risks using instrumental variable quantile regression. We find that supply-driven inflation disproportionately raises unemployment tail risks for cyclically vulnerable workers in both the short and medium term, while demand-driven inflation has differential effects -- limited to race and reason for unemployment -- only in the medium term. Demand-boosting policies, including monetary policy, can inadvertently widen those disparities through the inflation channel, underscoring the importance of inflation stabilization in promoting equitable growth in the labor market. Our findings could be explained structurally by heterogeneity in experienced inflation and wage inflation expectations.

Suggested Citation

  • Hie Joo Ahn & Lam Nguyen, 2025. "Who's at Risk? Effects of Inflation on Unemployment Risk," Papers 2505.05757, arXiv.org.
  • Handle: RePEc:arx:papers:2505.05757
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    References listed on IDEAS

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