使用GARCH模型模拟比特币收益的波动性

IF 3.2 Q1 BUSINESS, FINANCE Quantitative Finance and Economics Pub Date : 2019-11-26 DOI:10.3934/qfe.2019.4.739
S. Gyamerah
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引用次数: 31

摘要

比特币受到了投资者和分析师的广泛关注,因为它是加密货币市场市值最高的货币。本文使用三个GARCH模型(sGARCH、iGARCH和tGARCH)评估比特币收益的波动性。新的发展允许对比特币收益率序列中的波动性集群效应、轻仓率和偏斜分布进行建模。与Students分布和广义误差分布相比,正态逆高斯(NIG)分布充分捕捉了所有GARCH模型中的轻子库数和偏度。tGARCH模型是最好的模型,因为它描述了比特币市场中冲击的不对称发生。也就是说,投资者对同样数量的好消息和坏消息的反应是不同的。从实证结果可以得出结论,tGARCH NIG是估计比特币收益序列波动性的最佳模型。一般来说,在GARCH型模型中使用NIG分布是最优的,因为大多数加密货币的时间序列都是轻仓的。
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Modelling the volatility of Bitcoin returns using GARCH models
Bitcoin has received a lot of attention from both investors and analysts, as it forms the highest market capitalization in the cryptocurrency market. This paper evaluates the volatility of Bitcoin returns using three GARCH models (sGARCH, iGARCH, and tGARCH). The new development allows for the modeling of volatility clustering effects, the leptokurtic and the skewed distribution in the return series of Bitcoin. Comparative to the Students’t-distribution and the Generalized error distribution, the Normal Inverse Gaussian (NIG) distribution captured adequately the leptokurtic and skewness in all the GARCH models. The tGARCH model was the best model as it described the asymmetric occurrence of shocks in the Bitcoin market. That is, the response of investors to the same amount of good and bad news are distinct. From the empirical results, it can be concluded that tGARCH-NIG was the best model to estimate the volatility in the return series of Bitcoin. Generally, it would be optimal to use the NIG distribution in GARCH type models since time series of most cryptocurrency are leptokurtic.
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来源期刊
CiteScore
0.30
自引率
1.90%
发文量
14
审稿时长
12 weeks
期刊最新文献
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