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Articles (2022), Journal of Econometrics, 230 (1), pp. 114-130

Real-time Bayesian learning and bond return predictability

WAN Runqing, FULOP Andras , LI Junye

The paper examines statistical and economic evidence of out-of-sample bond return predictability for a real-time Bayesian investor who learns about parameters, hidden states, and predictive models over time. We find some statistical evidence using information contained in forward rates. However, such statistical predictability can hardly generate any economic value for investors. Furthermore, we find that strong statistical and economic evidence of bond return predictability from fully-revised macroeconomic data vanishes when real-time macroeconomic information is used. We also show that highly levered investments in bonds can improve short-run bond return predictability. Lien vers l'article

WAN, R., FULOP, A. and LI, J. (2022). Real-time Bayesian learning and bond return predictability. Journal of Econometrics, 230(1), pp. 114-130.

Mots clés : #Bayesian-learning, #Bond-return-predictability, #Non, #overlapping-bond-returns, #Parameter-uncertainty, #Model-combinations, #Real, #time-macroeconomic-information