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Housing Boom and Headline Inflation: Insights from Machine Learning

Author

Listed:
  • Yang Liu
  • Di Yang
  • Mr. Yunhui Zhao

Abstract

Inflation has been rising during the pandemic against supply chain disruptions and a multi-year boom in global owner-occupied house prices. We present some stylized facts pointing to house prices as a leading indicator of headline inflation in the U.S. and eight other major economies with fast-rising house prices. We then apply machine learning methods to forecast inflation in two housing components (rent and owner-occupied housing cost) of the headline inflation and draw tentative inferences about inflationary impact. Our results suggest that for most of these countries, the housing components could have a relatively large and sustained contribution to headline inflation, as inflation is just starting to reflect the higher house prices. Methodologically, for the vast majority of countries we analyze, machine-learning models outperform the VAR model, suggesting some potential value for incorporating such models into inflation forecasting.

Suggested Citation

  • Yang Liu & Di Yang & Mr. Yunhui Zhao, 2022. "Housing Boom and Headline Inflation: Insights from Machine Learning," IMF Working Papers 2022/151, International Monetary Fund.
  • Handle: RePEc:imf:imfwpa:2022/151
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