Real-time Bayesian learning and bond return predictability

Author(s):  
Runqing Wan ◽  
Andras Fulop ◽  
Junye Li
Author(s):  
Daniele Bianchi ◽  
Matthias Büchner ◽  
Andrea Tamoni

Abstract We show that machine learning methods, in particular, extreme trees and neural networks (NNs), provide strong statistical evidence in favor of bond return predictability. NN forecasts based on macroeconomic and yield information translate into economic gains that are larger than those obtained using yields alone. Interestingly, the nature of unspanned factors changes along the yield curve: stock- and labor-market-related variables are more relevant for short-term maturities, whereas output and income variables matter more for longer maturities. Finally, NN forecasts correlate with proxies for time-varying risk aversion and uncertainty, lending support to models featuring both channels.


2005 ◽  
Vol 41 (11) ◽  
Author(s):  
Abedalrazq Khalil ◽  
Mac McKee ◽  
Mariush Kemblowski ◽  
Tirusew Asefa

This article presents an improved equity momentum measure for corporate bonds, using the euro-denominated global investment-grade corporate bond market from 2000 to 2016. The author documents economically meaningful and statistically significant corporate bond return predictability. In contrast to the widely used total equity return, momentum as measured by the residual (idiosyncratic) equity return appears to further enhance risk-adjusted performance of corporate bond investors. Additional support for this conjecture is obtained from tests for various asset pricing factors and transaction costs, as exposure to these risk factors cannot explain this abnormal pattern in returns.


2020 ◽  
Author(s):  
Daniel Borup ◽  
Jonas Nygaard Eriksen ◽  
Mads Markvart Kjær ◽  
Martin Thyrsgaard

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