Stock market analysis from Twitter and news based on streaming big data infrastructure

C. Lee, Incheon Paik
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引用次数: 10

Abstract

Due to the rapid development of the web, services of social media and Internet of Things (IoT) are producing a huge volume of data in every second. This data is not only large, but also grows quickly and is difficult to analyze. Most of traditional big data framework can't process such data in real-time. For processing the data in real-time, many companies and researchers have started to develop new big data frameworks. The Apache Spark, Apache Flink and Apache Storm have been introduced for real-time data processing. With the new processing frameworks, it has become more efficient to analyze the streaming data. Stock market analysis is a hot issued domain to analyze the big streaming data. In this paper, we build a real-time processing system to analyze tweets for finding correlation with the stock market. System configuration, performance of our system is explained. With 77% accuracy of Twitter data classification, we got 80% of separation of increase/decrease of stock value.
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基于流媒体大数据基础设施的Twitter股票市场分析和新闻
由于网络的快速发展,社交媒体服务和物联网(IoT)每秒都在产生大量的数据。这些数据不仅大,而且增长快,难以分析。传统的大数据框架大多无法实时处理此类数据。为了实时处理数据,许多公司和研究人员已经开始开发新的大数据框架。引入了Apache Spark、Apache Flink和Apache Storm进行实时数据处理。随着新的处理框架的出现,流数据的分析变得更加高效。股票市场分析是分析大流数据的热点领域。在本文中,我们建立了一个实时处理系统来分析推文,以寻找与股票市场的相关性。对系统的结构、性能进行了说明。在Twitter数据分类准确率为77%的情况下,我们获得了80%的股票价值增减分离率。
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