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Influential user weighted sentiment analysis on topic based microblogging community

机译:基于主题的微博社区的有影响力的用户加权情感分析

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Nowadays, social microblogging services have become a popular expression platform of what people think. People use these platforms to produce content on different topics from finance, politics and sports to sociological fields in real-time. With the proliferation of social microblogging sites, the massive amount of opinion texts have become available in digital forms, thus enabling research on sentiment analysis to both deepen and broaden in different sociological fields. Previous sentiment analysis research on microblogging services generally focused on text as the unique source of information, and did not consider the social microblogging service network information. Inspired by the social network analysis research and sentiment analysis studies, we find that people's trust in a community have an important place in determining the community's sentiment polarity about a topic. When studies in the literature are examined, it is seen that trusted users in a community are actually influential users. Hence, we propose a novel sentiment analysis approach that takes into account the social network information as well. We concentrate on the effect of influential users on the sentiment polarity of a topic based microblogging community. Our approach extends the classical sentiment analysis methods, which only consider text content, by adding a novel PageRank-based influential user finding algorithm. We have carried out a comprehensive empirical study of two real-world Twitter datasets to analyze the correlation between the mood of the financial social community and the behavior of the stock exchange of Turkey, namely BIST100, using Pearson correlation coefficient method. Experimental results validate our assumptions and show that the proposed sentiment analysis method is more effective in finding topic based microblogging community's sentiment polarity. (C) 2017 Elsevier Ltd. All rights reserved.
机译:如今,社交微博服务已经成为人们思考的流行表达平台。人们使用这些平台实时生成涉及金融,政治,体育和社会学等不同主题的内容。随着社交微博站点的激增,大量的意见文本已经以数字形式提供,从而使情感分析研究能够在不同的社会学领域中加深和拓宽。以往关于微博服务的情感分析研究通常集中在文本作为唯一的信息来源,而没有考虑社交微博服务的网络信息。在社交网络分析研究和情感分析研究的启发下,我们发现人们对社区的信任在确定社区对某个主题的情感极性方面具有重要地位。当检查文献中的研究时,可以发现社区中受信任的用户实际上是有影响力的用户。因此,我们提出了一种新颖的情感分析方法,该方法也考虑了社交网络信息。我们专注于有影响力的用户对基于主题的微博社区的情感极性的影响。我们的方法通过添加一种新颖的基于PageRank的有影响力的用户发现算法,扩展了仅考虑文本内容的经典情感分析方法。我们对两个真实世界的Twitter数据集进行了全面的实证研究,以使用Pearson相关系数方法分析了金融社会团体的情绪与土耳其证券交易所BIST100行为之间的相关性。实验结果验证了我们的假设,并表明所提出的情绪分析方法在寻找基于主题的微博社区的情绪极性方面更为有效。 (C)2017 Elsevier Ltd.保留所有权利。

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