James Mitchell
;
Aubrey Poon
;
Dan Zhu

constructing density forecasts from quantile regressions: multimodality in macro-financial dynamics

Quantile regression methods are increasingly used to forecast tail risks and uncertainties in macroeconomic outcomes. This paper reconsiders how to construct predictive densities from quantile regressions. We compare a popular two-step approach that fits a specific parametric density to the quantile forecasts with a nonparametric alternative that lets the “data speak.” Simulation evidence and an application revisiting GDP growth uncertainties in the US demonstrate the flexibility of the nonparametric approach when constructing density forecasts from both frequentist and Bayesian quantile regressions. They identify its ability to unmask deviations from symmetrical and unimodal densities. The dominant macroeconomic narrative becomes one of the evolution, over the business cycle, of multimodalities rather than asymmetries in the predictive distribution of GDP growth when conditioned on financial conditions. The file contains the data and the code for replicating the results in the paper.

Data and Resources

Suggested Citation

Mitchell, James; Poon, Aubrey; Zhu, Dan (2024): Constructing density forecasts from quantile regressions: Multimodality in macro-financial dynamics. Version: 1. Journal of Applied Econometrics. Dataset. http://dx.doi.org/10.15456/jae.2024052.2221656960