Hot Events Detection of Stock Market Based on Time Series Data of Stock and Text Data of Network Public Opinion

Beibei Cao
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引用次数: 2

Abstract

With the highly integration of the Internet world and the real world, Internet information not only provides real-time and effective data for financial investors, but also helps them understand market dynamics, and enables investors to quickly identify relevant financial events that may lead to stock market volatility. However, in the research of event detection in the financial field, many studies are focused on micro-blog, news and other network text information. Few scholars have studied the characteristics of financial time series data. Considering that in the financial field, the occurrence of an event often affects both the online public opinion space and the real transaction space, so this paper proposes a multi-source heterogeneous information detection method based on stock transaction time series data and online public opinion text data to detect hot events in the stock market. This method uses outlier detection algorithm to extract the time of hot events in stock market based on multi-member fusion. And according to the weight calculation formula of the feature item proposed in this paper, this method calculates the keyword weight of network public opinion information to obtain the core content of hot events in the stock market. Finally, accurate detection of stock market hot events is achieved.
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基于股票时间序列数据和网络舆情文本数据的股市热点事件检测
随着互联网世界与现实世界的高度融合,互联网信息不仅为金融投资者提供了实时有效的数据,还帮助他们了解市场动态,使投资者能够快速识别可能导致股市波动的相关金融事件。然而,在金融领域的事件检测研究中,很多研究都集中在微博、新闻等网络文本信息上。很少有学者对金融时间序列数据的特征进行研究。考虑到在金融领域,事件的发生往往会同时影响网络舆情空间和现实交易空间,因此本文提出了一种基于股票交易时间序列数据和网络舆情文本数据的多源异构信息检测方法,用于股票市场热点事件的检测。该方法采用基于多成员融合的离群点检测算法提取股票市场热点事件的时间。该方法根据本文提出的特征项权重计算公式,计算网络舆情信息的关键词权重,获得股市热点事件的核心内容。最后,实现了对股票市场热点事件的准确检测。
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