Generalized Autoregressive Score Trees and Forests

05/30/2023
by   Andrew J. Patton, et al.
0

We propose methods to improve the forecasts from generalized autoregressive score (GAS) models (Creal et. al, 2013; Harvey, 2013) by localizing their parameters using decision trees and random forests. These methods avoid the curse of dimensionality faced by kernel-based approaches, and allow one to draw on information from multiple state variables simultaneously. We apply the new models to four distinct empirical analyses, and in all applications the proposed new methods significantly outperform the baseline GAS model. In our applications to stock return volatility and density prediction, the optimal GAS tree model reveals a leverage effect and a variance risk premium effect. Our study of stock-bond dependence finds evidence of a flight-to-quality effect in the optimal GAS forest forecasts, while our analysis of high-frequency trade durations uncovers a volume-volatility effect.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/18/2021

Effect of the U.S.–China Trade War on Stock Markets: A Financial Contagion Perspective

In this paper, we investigate the effect of the U.S.–China trade war on ...
research
07/19/2019

A Vine-copula extension for the HAR model

The heterogeneous autoregressive (HAR) model is revised by modeling the ...
research
11/13/2020

Dynamic factor, leverage and realized covariances in multivariate stochastic volatility

In the stochastic volatility models for multivariate daily stock returns...
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
02/13/2020

A study on the leverage effect on financial series using a TAR model: a Bayesian approach

This research shows that under certain mathematical conditions, a thresh...

Please sign up or login with your details

Forgot password? Click here to reset