使用中心性度量的短期加密货币价格走势预测

Kin-Hon Ho, Wai-Han Chiu, Chin Li
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引用次数: 2

摘要

我们使用2013年至2020年间排名前120位的加密货币的历史每日收盘价,使用中心性指标进行网络分析,以研究和了解加密货币市场的动态演变和特征。我们的研究有三个主要发现:(1)从2013年到2016年,加密货币之间的总体交叉收益相关性减弱,之后增强;(2)主要用于交易支付的加密货币,特别是比特币,在2016年年中之前主导市场,其次是使用区块链作为底层技术的应用程序开发的加密货币,特别是数据存储和记录,如MAID和FCT,在2016年年中至2017年年中。从那时起,ETH以及与之密切相关的加密货币取代了BTC,成为基准加密货币。此外,在2019冠状病毒病暴发期间,由于QTUM和BNB在大流行期间积极参与社区活动,因此间歇性地取代ETH占据领先地位;(3)中心性度量是提高短期加密货币价格走势预测准确性的有用特征。
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A Short-Term Cryptocurrency Price Movement Prediction Using Centrality Measures
We conduct a network analysis with centrality measures, using historical daily close prices of top 120 cryptocurrencies between 2013 and 2020, to study and understand the dynamic evolution and characteristics of the cryptocurrency market. Our study has three primary findings: (1) the overall cross-return correlation among the cryptocurrencies is weakening from 2013 to 2016 and then strengthening thereafter; (2) cryptocurrencies that are primarily used for transaction payment, notably BTC, dominate the market until mid-2016, followed by those developed for applications using blockchain as the underlying technology, particularly data storage and recording such as MAID and FCT, between mid-2016 and mid-2017. Since then, ETH, alongside with its strongly correlated cryptocurrencies have replaced BTC to become the benchmark cryptocurrencies. Furthermore, during the outbreak of COVID-19, QTUM and BNB have intermittently replaced ETH to take the leading positions due to their active community engagement during the pandemic; (3) centrality measures are useful features in improving the prediction accuracy of the short-term cryptocurrency price movement.
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