高频比特币

Leopoldo Catania, Mads Sandholdt
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引用次数: 21

摘要

本文研究了不同采样频率下比特币收益的行为。我们考虑从Bitstamp和Coinbase交易所交易的逐点价格变化开始的高频回报。我们发现了平滑的每日季节性模式的证据,以及周四和周五异常的交易和波动强度。我们发现比特币在一天或一天以上的回报没有可预测性,但是我们发现样本频率的可预测性高达6小时。比特币回报的可预测性也被发现是时变的。我们还研究了比特币的实现波动率的行为。我们记录到超过80%的跳跃比例非常高。我们还发现,已实现波动率表现出:(1)长记忆性;(二)杠杆效应;(3)没有滞后跳跃的影响。一项预测研究表明:(1)2017年之后比特币的波动性变得更容易预测;(ii)纳入杠杆成分有助于波动性预测;(3)预测精度取决于预测视界的长度。
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Bitcoin at High Frequency
This paper studies the behaviour of Bitcoin returns at different sample frequencies. We consider high frequency returns starting from tick-by-tick price changes traded at the Bitstamp and Coinbase exchanges. We find evidence of a smooth intra-daily seasonality pattern, and an abnormal trade- and volatility intensity at Thursdays and Fridays. We find no predictability for Bitcoin returns at or above one day, though, we find predictability for sample frequencies up to 6 h. Predictability of Bitcoin returns is also found to be time–varying. We also study the behaviour of the realized volatility of Bitcoin. We document a remarkable high percentage of jumps above 80 % . We also find that realized volatility exhibits: (i) long memory; (ii) leverage effect; and (iii) no impact from lagged jumps. A forecast study shows that: (i) Bitcoin volatility has become more easy to predict after 2017; (ii) including a leverage component helps in volatility prediction; and (iii) prediction accuracy depends on the length of the forecast horizon.
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