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Information-theoretic measures for nonlinear causality detection: application to social media sentiment and cryptocurrency prices

机译:非线性因果区检测信息 - 理论措施:社交媒体情绪和加密货币价格的应用

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摘要

Information transfer between time series is calculated using the asymmetric information-theoretic measure known as transfer entropy. Geweke’s autoregressive formulation of Granger causality is used to compute linear transfer entropy, and Schreiber’s general, non-parametric, information-theoretic formulation is used to quantify nonlinear transfer entropy. We first validate these measures against synthetic data. Then we apply these measures to detect statistical causality between social sentiment changes and cryptocurrency returns. We validate results by performing permutation tests by shuffling the time series, and calculate the Z-score. We also investigate different approaches for partitioning in non-parametric density estimation which can improve the significance. Using these techniques on sentiment and price data over a 48-month period to August 2018, for four major cryptocurrencies, namely bitcoin (BTC), ripple (XRP), litecoin (LTC) and ethereum (ETH), we detect significant information transfer, on hourly timescales, with greater net information transfer from sentiment to price for XRP and LTC, and instead from price to sentiment for BTC and ETH. We report the scale of nonlinear statistical causality to be an order of magnitude larger than the linear case.
机译:使用已称为传输熵的非对称信息定理度量来计算时间序列之间的信息传输。 Geweke的因果关系的自回归制剂被用来计算线性传递熵,和施雷伯的一般情况下,非参数,信息理论制剂用于量化非线性传递熵。我们首先验证这些对抗合成数据的措施。然后,我们应用这些措施来检测社会情绪变化与加密货币回报之间的统计因果关系。我们通过通过混洗时间序列进行排列测试来验证结果,并计算Z分数。我们还研究了不同参数密度估计中的不同方法,这可以提高重要性。利用市场情绪和价格数据,这些技术在48个月内,到2018年8月,四大cryptocurrencies,即比特币(BTC),纹波(XRP),莱特币(LTC)和复仇(ETH),我们发现显著的信息传递,在每小时时间尺度,从情绪转移到XRP和LTC的比价更大的净信息转移,而是从BTC和Eth的价格到情绪。我们向非线性统计因果关系的规模报告为大于线性情况的数量级。

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