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Presidential Address: How Much “Rationality” Is There in Bond‐Market Risk Premiums?

Journal of Finance 2021 76(4), 1611-1654
ABSTRACT Beliefs of professional forecasters are benchmarked against those of a Bayesian econometrician who is learning about the unknown dynamics of the bond risk factors. Consistent with rational Bayesian learning, the forecast errors of individual professionals and are comparably predictable over the business cycle. The secular and cyclical patterns of professionals' forecasts relative to those of are explored in depth. Inconsistent with many models with belief dispersion, the relationship between professionals' yield disagreement and their matched disagreements about macroeconomic fundamentals is very weak.

An Econometric Model of the Term Structure of Interest-Rate Swap Yields.

Journal of Finance 1997 52(4), 1287-1321
This article develops a multi-factor econometric model of the term structure of interest-rate swap yields. The model accommodates the possibility of counterparty default, and any differences in the liquidities of the Treasury and Swap markets. By parameterizing a model of swap rates directly, the authors are able to compute model-based estimates of the defaultable zero-coupon bond rates implicit in the swap market without having to specify a priori the dependence of these rates on default hazard or recovery rates. The time series analysis of spreads between zero-coupon swap and treasury yields reveals that both credit and liquidity factors were important sources of variation in swap spreads over the past decade.

Learning From Disagreement in the U.S. Treasury Bond Market

Journal of Finance 2021 76(1), 395-441
ABSTRACT We study risk premiums in the U.S. Treasury bond market from the perspective of a Bayesian econometrician who learns in real time from disagreement among investors about future bond yields. Notably, disagreement has substantial predictive power for yields, and 's risk premiums are less volatile than those in the analogous model without learning. 's forecasts are substantially more accurate than the consensus forecasts of market professionals, particularly following U.S. recessions. The predictive power of disagreement is distinct from the (much weaker) one of inflation and output growth. Rather, it appears to reflect uncertainty about future fiscal policy.