Horseshoe Prior Bayesian Quantile Regression

06/13/2020
by   David Kohns, et al.
0

This paper extends the horseshoe prior of Carvalho et al. (2010) to the Bayesian quantile regression (HS-BQR) and provides a fast sampling algorithm that speeds up computation significantly in high dimensions. The performance of the HS-BQR is tested on large scale Monte Carlo simulations and an empirical application relevant to macroeoncomics. The Monte Carlo design considers several sparsity structures (sparse, dense, block) and error structures (i.i.d. errors and heteroskedastic errors). A number of LASSO based estimators (frequentist and Bayesian) are pitted against the HS-BQR to better gauge the performance of the method on the different designs. The HS-BQR yields just as good, or better performance than the other estimators considered when evaluated using coefficient bias and forecast error. We find that the HS-BQR is particularly potent in sparse designs and when estimating extreme quantiles. The simulations also highlight how the high dimensional quantile estimators fail to correctly identify the quantile function of the variables when both location and scale effects are present. In the empirical application, in which we evaluate forecast densities of US inflation, the HS-BQR provides well calibrated forecast densities whose individual quantiles, have the highest pseudo R squared, highlighting its potential for Value-at-Risk estimation.

READ FULL TEXT
research
06/14/2018

Improving precipitation forecast using extreme quantile regression

Aiming to predict extreme precipitation forecast quantiles, we propose a...
research
05/24/2022

Partial frontiers are not quantiles

Quantile regression and partial frontier are two distinct approaches to ...
research
07/18/2021

Decoupling Shrinkage and Selection for the Bayesian Quantile Regression

This paper extends the idea of decoupling shrinkage and sparsity for con...
research
11/05/2021

Quantile index regression

Estimating the structures at high or low quantiles has become an importa...
research
02/24/2022

Predicting Value at Risk for Cryptocurrencies Using Generalized Random Forests

We study the estimation and prediction of the risk measure Value at Risk...
research
09/25/2018

Mostly Harmless Simulations? On the Internal Validity of Empirical Monte Carlo Studies

Currently there is little practical advice on which treatment effect est...
research
05/16/2018

Adaptive elastic-net and fused estimators in high-dimensional group quantile linear model

In applications, the variables are naturally grouped in a linear quantil...

Please sign up or login with your details

Forgot password? Click here to reset