Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model

Bitcoin (BTC), as the dominant cryptocurrency, has attracted tremendous attention lately due to its excessive volatility. This paper proposes the time-varying transition probability Markov-switching GARCH (TV-MSGARCH) models incorporated with BTC daily trading volume and daily Google searches singly...

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Main Authors: Tan, Chia-Yen, Koh, You-Beng, Ng, Kok-Haur, Ng, Kooi-Huat
Format: Article
Published: Elsevier 2021
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Online Access:http://eprints.um.edu.my/26435/
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spelling my.um.eprints.264352022-03-03T00:40:51Z http://eprints.um.edu.my/26435/ Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model Tan, Chia-Yen Koh, You-Beng Ng, Kok-Haur Ng, Kooi-Huat QA Mathematics Bitcoin (BTC), as the dominant cryptocurrency, has attracted tremendous attention lately due to its excessive volatility. This paper proposes the time-varying transition probability Markov-switching GARCH (TV-MSGARCH) models incorporated with BTC daily trading volume and daily Google searches singly and jointly as exogenous variables to model the volatility dynamics of BTC return series. Extensive comparisons are carried out to evaluate the modelling performances of the proposed model with the benchmark models such as GARCH, GJRGARCH, threshold GARCH, constant transition probability MSGARCH and MSGJRGARCH. Results reveal that the TV-MSGARCH models with skewed and fat-tailed distribution predominate other models for the in-sample model fitting based on Akaike information criterion and other benchmark criteria. Furthermore, it is found that the TV-MSGARCH model with BTC daily trading volume and student-t error distribution offers the best out-of-sample forecast evaluated based on the mean square error loss function using Hansen's model confidence set. Filardo's weighted transition probabilities are also computed and the results show the existence of time-varying effect on transition probabilities. Lastly, different levels of long and short positions of value-at-risk and the expected shortfall forecasts based on MSGARCH, MSGJRGARCH and TV-MSGARCH models are also examined. Elsevier 2021-04 Article PeerReviewed Tan, Chia-Yen and Koh, You-Beng and Ng, Kok-Haur and Ng, Kooi-Huat (2021) Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model. The North American Journal of Economics and Finance, 56. ISSN 1062-9408, DOI https://doi.org/10.1016/j.najef.2021.101377 <https://doi.org/10.1016/j.najef.2021.101377>. 10.1016/j.najef.2021.101377
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA Mathematics
spellingShingle QA Mathematics
Tan, Chia-Yen
Koh, You-Beng
Ng, Kok-Haur
Ng, Kooi-Huat
Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model
description Bitcoin (BTC), as the dominant cryptocurrency, has attracted tremendous attention lately due to its excessive volatility. This paper proposes the time-varying transition probability Markov-switching GARCH (TV-MSGARCH) models incorporated with BTC daily trading volume and daily Google searches singly and jointly as exogenous variables to model the volatility dynamics of BTC return series. Extensive comparisons are carried out to evaluate the modelling performances of the proposed model with the benchmark models such as GARCH, GJRGARCH, threshold GARCH, constant transition probability MSGARCH and MSGJRGARCH. Results reveal that the TV-MSGARCH models with skewed and fat-tailed distribution predominate other models for the in-sample model fitting based on Akaike information criterion and other benchmark criteria. Furthermore, it is found that the TV-MSGARCH model with BTC daily trading volume and student-t error distribution offers the best out-of-sample forecast evaluated based on the mean square error loss function using Hansen's model confidence set. Filardo's weighted transition probabilities are also computed and the results show the existence of time-varying effect on transition probabilities. Lastly, different levels of long and short positions of value-at-risk and the expected shortfall forecasts based on MSGARCH, MSGJRGARCH and TV-MSGARCH models are also examined.
format Article
author Tan, Chia-Yen
Koh, You-Beng
Ng, Kok-Haur
Ng, Kooi-Huat
author_facet Tan, Chia-Yen
Koh, You-Beng
Ng, Kok-Haur
Ng, Kooi-Huat
author_sort Tan, Chia-Yen
title Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model
title_short Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model
title_full Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model
title_fullStr Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model
title_full_unstemmed Dynamic volatility modelling of Bitcoin using time-varying transition probability Markov-switching GARCH model
title_sort dynamic volatility modelling of bitcoin using time-varying transition probability markov-switching garch model
publisher Elsevier
publishDate 2021
url http://eprints.um.edu.my/26435/
_version_ 1735409412420403200