论文标题

一种预测市场波动的情感分析方法

A Sentiment Analysis Approach to the Prediction of Market Volatility

论文作者

Deveikyte, Justina, Geman, Helyette, Piccari, Carlo, Provetti, Alessandro

论文摘要

未来波动和回报的预测和量化在财务建模中在投资组合优化和风险管理中都起着重要作用。今天的自然语言处理可以处理新闻和社交媒体评论,以检测投资者信心的信号。我们已经探索了从金融新闻与推文和FTSE100运动中提取的情绪之间的关系。我们调查了在特定日期和市场波动率的情绪措施之间的相关性和第二天的回报。研究结果表明,情绪与股票市场变动之间存在相关性的证据:新闻头条捕获的情感可以用作预测市场收益的信号;同样的不适用于波动。同样,在一个令人惊讶的发现中,对于Twitter评论中发现的情绪,我们获得了-0.7的相关系数,而P值低于0.05,这表明在给定的一天中从推文中捕获的积极情绪与波动性观察到第二天。我们开发了一个准确的分类器,以根据潜在的Dirichlet分配来部署主题建模来预测市场波动,以从一系列推文和财务新闻中提取功能向量。获得的功能用作分类器的附加输入。由于情感和主题建模的组合,我们的分类器实现了63%的波动性的定向预测准确性。

Prediction and quantification of future volatility and returns play an important role in financial modelling, both in portfolio optimization and risk management. Natural language processing today allows to process news and social media comments to detect signals of investors' confidence. We have explored the relationship between sentiment extracted from financial news and tweets and FTSE100 movements. We investigated the strength of the correlation between sentiment measures on a given day and market volatility and returns observed the next day. The findings suggest that there is evidence of correlation between sentiment and stock market movements: the sentiment captured from news headlines could be used as a signal to predict market returns; the same does not apply for volatility. Also, in a surprising finding, for the sentiment found in Twitter comments we obtained a correlation coefficient of -0.7, and p-value below 0.05, which indicates a strong negative correlation between positive sentiment captured from the tweets on a given day and the volatility observed the next day. We developed an accurate classifier for the prediction of market volatility in response to the arrival of new information by deploying topic modelling, based on Latent Dirichlet Allocation, to extract feature vectors from a collection of tweets and financial news. The obtained features were used as additional input to the classifier. Thanks to the combination of sentiment and topic modelling our classifier achieved a directional prediction accuracy for volatility of 63%.

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