用于识别加密货币时间序列关键转换的拓扑数据分析

Patipol Saengduean, S. Noisagool, F. Chamchod
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引用次数: 2

摘要

在这项研究中,我们调查了加密货币市场的金融崩溃,包括2018年数字市场崩溃期间比特币和以太坊两种加密货币的小型和重大崩溃。通过应用拓扑数据分析技术,我们能够预测金融转型,并探索窗口大小和点云数据维度的最佳值,以获得良好的预警信号。我们的研究结果表明,在金融危机发生之前,持续景观的l1 -范数和C1 -范数达到了峰值。
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Topological Data Analysis for Identifying Critical Transitions in Cryptocurrency Time Series
In this study, we investigate financial crashes in the cryptocurrency market including both mini and major crashes for two cryptocurrencies, Bitcoin and Ethereum, during the period that the digital market crashed in 2018. By applying techniques in topological data analysis, we are able to predict financial transitions and explore optimal values of the window size and the dimension of point cloud data to obtain good early warning signals. Our results demonstrate good early warning signals before the financial crashes and also show that the L1-norm and C1 – norm of persistent landscapes peak before the crashes occur.
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