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Causality Analysis of Twitter Sentiments and Stock Market Returns

机译:Twitter情绪与股市收益的因果关系分析

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Sentiment analysis is the process of identifying the opinion expressed in text. Recently, it has been used to study behavioral finance, and in particular the effect of opinions and emotions on economic or financial decisions. In this paper, we use a public dataset of labeled tweets that has been labeled by Amazon Mechanical Turk and then we propose a baseline classification model. Then, by using Granger causality of both sentiment datasets with the different stocks, we shows that there is causality between social media and stock market returns (in both directions) for many stocks. Finally, We evaluate this causality analysis by showing that in the event of a specific news on certain dates, there are evidences of trending the same news on Twitter for that stock.
机译:情感分析是识别文本表达的观点的过程。最近,它已被用于研究行为金融,特别是观点和情绪对经济或金融决策的影响。在本文中,我们使用已被Amazon Mechanical Turk标记过的带标签推文的公共数据集,然后提出了一个基线分类模型。然后,通过使用具有不同股票的两个情绪数据集的格兰杰因果关系,我们表明,社交媒体与许多股票的股票市场收益(双向)之间存在因果关系。最后,我们通过显示在某些日期发生特定新闻的事件来评估这种因果关系分析,有证据表明该股票在Twitter上趋势相同的新闻。

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