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Mixed-Frequency Predictive Regressions

Authors :
Leippold, Markus; https://orcid.org/0000-0001-5983-2360
Yang, Hanlin
Leippold, Markus; https://orcid.org/0000-0001-5983-2360
Yang, Hanlin
Source :
Leippold, Markus; Yang, Hanlin (2023). Mixed-Frequency Predictive Regressions. Journal of Forecasting, 42(8):1955-1972.
Publication Year :
2023

Abstract

We explore the performance of mixed-frequency predictive regressions for stock returns from the perspective of a Bayesian investor. We develop a constrained parameter learning approach for sequential estimation allowing for belief revisions. Empirically, we find that mixed-frequency models improve predictability, not only because of the combination of predictors with different frequencies but also due to the preservation of high-frequency features such as time-varying volatility. Temporally aggregated models misspecify the evolution frequency of the volatility dynamics, resulting in poor volatility timing and worse portfolio performance than the mixed-frequency specification. These results highlight the importance of preserving the potential mixed-frequency nature of predictors and volatility in predictive regressions.

Details

Database :
OAIster
Journal :
Leippold, Markus; Yang, Hanlin (2023). Mixed-Frequency Predictive Regressions. Journal of Forecasting, 42(8):1955-1972.
Notes :
application/pdf, info:doi/10.5167/uzh-235831, English, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1443053652
Document Type :
Electronic Resource