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Predicting cryptocurrency price bubbles using social media data and epidemic modelling

机译:使用社交媒体数据和流行病模型预测加密货币价格泡沫

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Financial price bubbles have previously been linked with the epidemic-like spread of an investment idea; such bubbles are commonly seen in cryptocurrency prices. This paper aims to predict such bubbles for a number of cryptocurrencies using a hidden Markov model previously utilised to detect influenza epidemic outbreaks, based in this case on the behaviour of novel online social media indicators. To validate the methodology further, a trading strategy is built and tested on historical data. The resulting trading strategy outperforms a buy and hold strategy. The work demonstrates both the broader utility of epidemic-detecting hidden Markov models in the identification of bubble-like behaviour in time series, and that social media can provide valuable predictive information pertaining to cryptocurrency price movements.
机译:以前,金融价格泡沫与投资理念的流行性传播有关。这种泡沫通常出现在加密货币价格中。本文旨在基于一种新颖的在线社交媒体指标的行为,使用一种以前用于检测流感疫情暴发的隐马尔可夫模型来预测多种加密货币的此类泡沫。为了进一步验证该方法,建立了交易策略并在历史数据上对其进行了测试。最终的交易策略优于买入和持有策略。这项工作证明了流行病检测隐马尔可夫模型在时间序列中类似泡沫行为的识别中具有更广泛的用途,并且社交媒体可以提供与加密货币价格走势有关的有价值的预测信息。

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