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Analyzing the Brazilian Financial Market through Portuguese Sentiment Analysis in Social Media

机译:通过社交媒体中的葡萄牙情绪分析来分析巴西金融市场

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摘要

According to the Efficient Market Hypothesis, financial market movements are dependent on news and external events that have a significant impact on the market value of companies. Thus, a great amount of applications has arisen to explore this knowledge through automatic sentiment and opinion extraction. The technique known as Sentiment Analysis (SA) aims to analyze opinions, sentiments, and emotions present in unstructured data, leading many papers to address the impact of news and social media publications on the financial market. However, the literature lacks works considering the effects of sentiment available on social media and its impacts on the Brazilian stock market. This work aims to conduct a study of the Brazilian stock market movement through SA in Twitter considering tree perspectives: (i) absolute number of tweet sentiments; (ii) tweets sentiments weighted by favorites; and (iii) tweets sentiments weighted by retweets. The analyzed period was the Brazilian electoral period of 2018 (01-Oct-2018 to 31-Dec-2018). In this paper, we first developed a comparison study with SA Machine Learning techniques (Naive Bayes, Support Vector Machines, Maximum Entropy, and Multilayer Perceptron) and then applied the best algorithm to establish the relations between sentiments and the Brazilian stock market movement considering different time frames (windows sizes). Results indicate that Multilayer Perceptron was the best technique to perform SA in Portuguese. In addition, we observed that the predominant sentiment in social media relates to the stock market movement, improving accuracy as long as windows sizes are increased.
机译:根据有效市场假说,金融市场动向取决于对公司的市场价值有重大影响的新闻和外部事件。因此,已经出现了大量的通过自动情感和观点提取来探索该知识的应用程序。称为情感分析(SA)的技术旨在分析非结构化数据中存在的观点,情感和情绪,导致许多论文致力于解决新闻和社交媒体出版物对金融市场的影响。但是,文献缺乏考虑情感对社交媒体的影响及其对巴西股票市场的影响的著作。这项工作旨在通过树的角度对通过Twitter的SA进行的巴西股市走势进行研究:(i)推文情感的绝对数量; (ii)按收藏夹加权的推文情感; (iii)由转推权重的推特情绪。分析的时期是巴西的选举时期(2018年10月1日至2018年12月31日)。在本文中,我们首先使用SA机器学习技术(朴素贝叶斯,支持向量机,最大熵和多层感知器)进行了比较研究,然后应用最佳算法来建立考虑到巴西股票市场情绪与情绪之间的关系。时间范围(窗口大小)。结果表明,多层感知器是在葡萄牙语中执行SA的最佳技术。此外,我们观察到社交媒体中的主要情绪与股市走势有关,只要窗口大小增加,准确性就会提高。

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  • 来源
    《Applied Artificial Intelligence》 |2020年第4期|1-19|共19页
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    Fed Inst Sao Paulo IFSP Sao Joao Da Boa Vista Brazil|Univ Campinas UNICAMP Sch Technol FT Limeira Brazil;

    Univ Campinas UNICAMP Sch Technol FT Limeira Brazil;

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