Yale School of Management, Yale University, New Haven, CT, United States of America.
PLoS One. 2023 May 11;18(5):e0284501. doi: 10.1371/journal.pone.0284501. eCollection 2023.
Cryptocurrencies are highly speculative assets with large price volatility. If one could forecast their behavior, this would make them more attractive to investors. In this work we study the problem of predicting the future performance of cryptocurrencies using social media data. We propose a new model to measure the engagement of users with topics discussed on social media based on interactions with social media posts. This model overcomes the limitations of previous volume and sentiment based approaches. We use this model to estimate engagement coefficients for 48 cryptocurrencies created between 2019 and 2021 using data from Twitter from the first month of the cryptocurrencies' existence. We find that the future returns of the cryptocurrencies are dependent on the engagement coefficients. Cryptocurrencies whose engagement coefficients have extreme values have lower returns. Low engagement coefficients signal a lack of interest, while high engagement coefficients signal artificial activity which is likely from automated accounts known as bots. We measure the amount of bot posts for the cryptocurrencies and find that generally, cryptocurrencies with more bot posts have lower future returns. While future returns are dependent on both the bot activity and engagement coefficient, the dependence is strongest for the engagement coefficient, especially for short-term returns. We show that simple investment strategies which select cryptocurrencies with engagement coefficients exceeding a fixed threshold perform well for holding times of a few months.
加密货币是具有高投机性和大幅价格波动的资产。如果能够预测其行为,这将使它们对投资者更具吸引力。在这项工作中,我们研究了使用社交媒体数据预测加密货币未来表现的问题。我们提出了一种新的模型,该模型基于与社交媒体帖子的交互来衡量用户对社交媒体上讨论的主题的参与度。该模型克服了基于以往交易量和情绪的方法的局限性。我们使用来自 Twitter 的数据,使用该模型估计了 2019 年至 2021 年创建的 48 种加密货币的参与系数,这些加密货币存在的第一个月。我们发现加密货币的未来收益取决于参与系数。参与系数极端的加密货币的回报较低。低参与系数表示缺乏兴趣,而高参与系数表示可能来自自动账户(称为机器人)的人为活动。我们测量了加密货币的机器人帖子数量,并发现通常,机器人帖子越多的加密货币未来的回报越低。虽然未来的回报既取决于机器人活动又取决于参与系数,但对于短期回报,参与系数的依赖性最强。我们表明,选择参与系数超过固定阈值的加密货币的简单投资策略在几个月的持有期内表现良好。