Beyond GARCH in cryptocurrency volatility modelling: superiority of range-based estimators

被引:0
|
作者
Sun, Weizhu [1 ]
Kristoufek, Ladislav [1 ,2 ]
机构
[1] Charles Univeristy, Inst Econ Studies, Fac Social Sci, Opletalova 26, CZ-11000 Prague, Czech Republic
[2] Czech Acad Sci, Inst Informat Theory & Automat, Prague, Czech Republic
关键词
Cryptoasset; cryptocurrency; volatility; GARCH; Garman-Klass; ASSET RETURNS;
D O I
10.1080/13504851.2024.2363295
中图分类号
F [经济];
学科分类号
02 ;
摘要
Cryptoassets are extremely volatile with possible volatility jumps and infrastructure noise, making the estimation of true volatility process challenging. When the high-frequency data are not available, the true volatility needs to be estimated to be further studied or forecasted. The GARCH-family models have become a norm in the field. Here, we examine the performance of 6 GARCH-type specifications with 4 distributional assumptions and compare them with 4 non-parametric range-based models built on the daily 'candles'. Our study focuses on five popular cryptocurrencies (Bitcoin, Ethereum, BNB, XRP, and Dogecoin) between 1 July 2019 and 30 September 2022, utilizing Binance 5-minute data for realized measures as the high-frequency estimators of the true volatility process. The results reveal that the Garman-Klass estimator clearly outperforms the GARCH-family models in all studied settings, and the other range-based estimators remain competitive with the GARCH-family models. These results are crucial for studies on volatility in cryptoassets where using the GARCH-type models is a standard. When the high-frequency data are not available, the range-based estimators, and the Garman-Klass estimator in particular, should be preferred as proxies for the true volatility process over the GARCH-type models, be it in the in-sample, more qualitative studies, or the forecasting, out-of-sample exercises.
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页数:8
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