Jump-Robust Realized-GARCH-MIDAS-X Estimators for Bitcoin and Ethereum Volatility Indices

Author:

Chevallier Julien1ORCID,Sanhaji Bilel1ORCID

Affiliation:

1. Economics Department, Université Paris 8 (LED), 2 rue de la Liberté, 93526 Saint-Denis, France

Abstract

In this paper, we conducted an empirical investigation of the realized volatility of cryptocurrencies using an econometric approach. This work’s two main characteristics are: (i) the realized volatility to be forecast filters jumps, and (ii) the benefit of using various historical/implied volatility indices from brokers as exogenous variables was explicitly considered. We feature a jump-robust extension of the REGARCH-MIDAS-X model incorporating realized beta GARCH processes and MIDAS filters with monthly, daily, and hourly components. First, we estimated six jump-robust estimators of realized volatility for Bitcoin and Ethereum that were retained as the dependent variable. Second, we inserted ten Bitcoin and Ethereum volatility indices gathered from various exchanges as an exogenous variable, each at a time. Third, we explored their forecasting ability based on the MSE and QLIKE statistics. Our sample spanned the period from May 2018 to January 2023. The main result featured the best predictors among the volatility indices for Bitcoin and Ethereum derived from 30-day implied volatility. The significance of the findings could mostly be attributable to the ability of our new model to incorporate financial and technological variables directly into the specification of the Bitcoin and Ethereum volatility dynamics.

Publisher

MDPI AG

Subject

Statistics and Probability

Reference68 articles.

1. Choosing the frequency of volatility components within the Double Asymmetric GARCH–MIDAS–X model;Amendola;Econom. Stat.,2021

2. Stock market volatility and macroeconomic fundamentals;Engle;Rev. Econ. Stat.,2013

3. Realized GARCH: A joint model for returns and realized measures of volatility;Hansen;J. Appl. Econom.,2012

4. Quantile forecasts of financial returns using realized GARCH models;Watanabe;Jpn. Econ. Rev.,2012

5. Modeling interest rate volatility: A realized GARCH approach;Tian;J. Bank. Financ.,2015

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