Decomposing uncertainty in macro-finance term structure models

Joseph P. Byrne, Shuo Cao

Research output: Contribution to journalArticlepeer-review

Abstract

This paper studies the extent to which macro-finance term structure models are susceptible to predictive uncertainty. We propose a general form of arbitrage-free models and quantify the relative importance of unpredictable priced risk variance, as well as macro-finance model uncertainty and learning uncertainty in predictability. Predictive performance and relative contributions of uncertainty sources are dynamically measured based on Bayesian methods, revealing dominating priced risk variance and other important uncertainty sources at different points in time. Macro-finance model uncertainty is high for near-term forward spread forecasts and contributes up to 87% of predictive uncertainty prior to recessions, implying strong dispersion in the information content of macro variables when forming near-term monetary policy expectations.
Original languageEnglish
Article numberraae004
Pages (from-to)428-449
Number of pages22
JournalThe Review of Asset Pricing Studies
Volume14
Issue number3
Early online date4 Feb 2024
DOIs
Publication statusPublished - 1 Sept 2024

Keywords

  • macro finance
  • term structure
  • uncertainty
  • Bayesian methods

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