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Boosting Financial Trend Prediction with Twitter Mood Based on Selective Hidden Markov Models

机译:基于选择性隐马尔可夫模型的Twitter情绪提高财务趋势预测

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Financial trend prediction has been a hot topic in both academia and industry. This paper proposes to exploit Twitter mood to boost financial trend prediction based on selective hidden Markov models (sHMM). First, we expand the profile of mood states (POMS) Bipolar lexicon to extract rich society moods from massive tweets. Then, we determine which mood has the most predictive power on the financial index based on Granger causality analysis (GCA). Finally, we extend sHMM to combine financial index and the selected Twitter mood to predict next-day trend. Extensive experiments show that our method not only outperforms the state-of-the-art methods, but also provides controllability to financial trend prediction.
机译:财务趋势预测一直是学术界和行业中的热门话题。本文提出利用Twitter情绪,基于选择性隐马尔可夫模型(sHMM)来提高财务趋势预测。首先,我们扩展情绪状态(POMS)双极性词典的轮廓,以从大量推文中提取丰富的社会情绪。然后,我们根据Granger因果分析(GCA)确定哪种情绪对财务指标具有最强的预测力。最后,我们扩展sHMM以结合财务指数和选定的Twitter情绪来预测第二天的趋势。大量的实验表明,我们的方法不仅优于最新方法,而且为财务趋势预测提供了可控性。

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