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Sentiment Analysis of Twitter Data for Predicting Stock Market Movements

机译:预测股市运动的推特数据的情感分析

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Predicting stock market movements is a well-known problem of interest. Now-a-days social media is perfectly representing the public sentiment and opinion about current events. Especially, twitter has attracted a lot of attention from researchers for studying the public sentiments. Stock market prediction on the basis of public sentiments expressed on twitter has been an intriguing field of research. Previous studies have concluded that the aggregate public mood collected from twitter may well be correlated with Dow Jones Industrial Average Index (DJIA). The thesis of this work is to observe how well the changes in stock prices of a company, the rises and falls, are correlated with the public opinions being expressed in tweets about that company. Understanding author's opinion from a piece of text is the objective of sentiment analysis. The present paper have employed two different textual representations, Word2vec and N-gram, for analyzing the public sentiments in tweets. In this paper, we have applied sentiment analysis and supervised machine learning principles to the tweets extracted from twitter and analyze the correlation between stock market movements of a company and sentiments in tweets. In an elaborate way, positive news and tweets in social media about a company would definitely encourage people to invest in the stocks of that company and as a result the stock price of that company would increase. At the end of the paper, it is shown that a strong correlation exists between the rise and falls in stock prices with the public sentiments in tweets.
机译:预测股市运动是一个众所周知的兴趣问题。现在,社交媒体完美地代表了关于当前事件的公众情绪和意见。特别是,Twitter吸引了研究人员的大量关注,以研究公众情绪。股票市场预测基于Twitter表达的公众情绪是一种有趣的研究领域。以前的研究已经得出结论,从Twitter收集的集合公共情绪可能与Dow Jones工业平均指数(DJIA)相关。这项工作的论点是观察公司的股票价格变化,升降的股票价格如何与关于该公司推文中的公众意见相关联。了解作者从一篇文章中的意见是情感分析的目标。本文聘请了两种不同的文本表示,Word2Vec和n-gram,用于分析推文中的公众情绪。在本文中,我们对从Twitter提取的推文进行了向促进发布的情感分析和监督机器学习原则,并分析了公司的股票市场运动与推文中的情绪之间的相关性。在详细的方式,关于公司的社交媒体的积极新闻和推文肯定会鼓励人们投资该公司的股票,因此该公司的股票价格将增加。在论文的末尾,表明在推文中的公众情绪上升和股票价格之间存在强烈的相关性。

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