Conditional Quantile Analysis for Realized GARCH Models
Abstract
This paper introduces a novel quantile approach to harness the high-frequency information and improve the daily conditional quantile estimation. Specifically, we model the conditional standard deviation as a realized GARCH model and employ conditional standard deviation, realized volatility, realized quantile, and absolute overnight return as innovations in the proposed dynamic quantile models. We devise a two-step estimation procedure to estimate the conditional quantile parameters. The first step applies a quasi-maximum likelihood estimation procedure, with the realized volatility as a proxy for the volatility proxy, to estimate the conditional standard deviation parameters. The second step utilizes a quantile regression estimation procedure with the estimated conditional standard deviation in the first step. Asymptotic theory is established for the proposed estimation methods, and a simulation study is conducted to check their finite-sample performance. Finally, we apply the proposed methodology to calculate the value at risk (VaR) of 20 individual assets and compare its performance with existing competitors.
Cite
@article{arxiv.2108.01967,
title = {Conditional Quantile Analysis for Realized GARCH Models},
author = {Donggyu Kim and Minseog Oh and Yazhen Wang},
journal= {arXiv preprint arXiv:2108.01967},
year = {2021}
}
Comments
39 pages, 6 figures