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    Tales of emotion and stock in China: volatility, causality and prediction

    来源🏋🏿‍♂️:WORLD WIDE WEB-INTERNET AND WE | 发布时间👨🏼‍⚖️:2018-06-06| 点击🔌🙍🏽‍♂️:

     

       Tales of emotion and stock in China: volatility, causality and prediction  

    作者:Zhou, ZK(Zhou, Zhenkun);Xu, K(Xu, Ke);Zhao, JC(Zhao, Jichang)  

     

         WORLD WIDE WEB-INTERNET AND WEB INFORMATION SYSTEMS    

     

    卷:        21        

    期:        4        

    页:        1093-1116        

    特刊:        SI        

    DOI:      10.1007/s11280-017-0495-4      

    出版年:      JUL 2018      

    文献类型:Article

    摘要

    How the online social media, like Twitter or its variant Weibo, interacts with the stock market and whether it can be a convincing proxy to predict the stock market have been debated for years, especially for China. As the traditional theory in behavioral finance states, the individual emotions can influence decision-makings of investors, it is reasonable to further explore these controversial topics systematically from the perspective of online emotions, which are richly carried by massive tweets in social media. Through thorough studies on over 10 million stock-relevant tweets and 3 million investors from Weibo, it is revealed that inexperienced investors with high emotional volatility are more sensible to the market fluctuations than the experienced or institutional ones, and their dominant occupation also indicates that the Chinese market might be more emotional as compared to its western counterparts. Then both correlation analysis and causality test demonstrate that five attributes of the stock market in China can be competently predicted by various online emotions, like disgust, joy, sadness and fear. Specifically, the presented prediction model significantly outperforms the baseline model, including the one taking purely financial time series as input features, on predicting five attributes of the stock market under the K-means discretization. We also employ this prediction model in the scenario of realistic online application and its performance is further testified.

       关键词  

    作者关键词:Social media;Stock market;Sentiment analysis;Volatility;Stock prediction  

    KeyWords Plus:DYNAMICS;WEATHER;TIME  

       作者信息  

    通讯作者地址:Zhao, JC (通讯作者)

    地址:

    电子邮件地址:jichang@buaa.edu.cn

    出版商

         SPRINGER, 233 SPRING ST, NEW YORK, NY 10013 USA    

    类别 / 分类  

    研究方向:Computer Science

    Web of Science 类别:Computer Science, Information Systems; Computer Science, Software Engineering

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