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Modeling Social Attention for Stock Analysis: An Influence Propagation Perspective

机译:建模社会关注股票分析:影响传播视角

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With the rapid growth of usage of social network, the patterns, the scales, and the rate of information exchange have brought profound impacts on research and practice in finance. One important topic is the stock market efficiency analysis. Traditional schemes in finance focus on identifying significant abnormal returns triggered by important events. However, those events are merely identified by regular financial announcements such as mergers, equity issuances, and financial reports. Related data-driven approaches mainly focus on developing trading strategies using social media data, while the results are usually lack of theoretical explanations. In this paper, we fill the gap between the usage of social media data and financial theories. We propose a Degree of Social Attention (DSA) framework for stock analysis based on influence propagation model. Specifically, we define the self-influence for users in a social network and the DSA for stocks. A recursive process is also designed for dynamic value updating. Furthermore, we provide two modified approaches to reduce the computational cost. Our testing results from the Chinese stock market suggest that the proposed framework effectively captures stock abnormal returns based on the related social media data; and DSA is verified to be a key factor to link social media activities to the stock market.
机译:随着社会网络的迅速增长,信息交换的模式,尺度和信息交换率为金融的研究和实践带来了深远的影响。一个重要主题是股票市场效率分析。财务中的传统计划重点是识别重要事件触发的重大异常回报。但是,这些事件仅通过定期的财务公告(如合并,股权发行和财务报告)确定。相关数据驱动的方法主要关注使用社交媒体数据开发交易策略,而结果通常缺乏理论解释。在本文中,我们填补了社交媒体数据和金融理论的使用与金融理论之间的差距。我们提出了基于影响传播模型的股票分析的社会关注程度(DSA)框架。具体来说,我们为社交网络和股票的DSA中的用户定义了自我影响。递归过程也被设计用于动态值更新。此外,我们提供了两个修改的方法来降低计算成本。我们的股票市场的测试结果表明,提出的框架有效地捕获了相关的社交媒体数据的股票异常返回; DSA被证明是将社交媒体活动链接到股票市场的关键因素。

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