Topic Modeling as a Tool to Gauge Political Sentiments from Twitter Feeds

D. Sarddar, Raktima Dey, R. Bose, Sandip Roy
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引用次数: 10

Abstract

As ubiquitous as it is, the Internet has spawned a slew of products that have forever changed the way one thinks of society and politics. This article proposes a model to predict chances of a political party winning based on data collected from Twitter microblogging website, because it is the most popular microblogging platform in the world. Using unsupervised topic modeling and the NRC Emotion Lexicon, the authors demonstrate how it is possible to predict results by analyzing eight types of emotions expressed by users on Twitter. To prove the results based on empirical analysis, the authors examine the Twitter messages posted during 14th Gujarat Legislative Assembly election, 2017. Implementing two unsupervised clustering methods of K-means and Latent Dirichlet Allocation, this research shows how the proposed model is able to examine and summarize observations based on underlying semantic structures of messages posted on Twitter. These two well-known unsupervised clustering methods provide a firm base for the proposed model to enable streamlining of decision-making processes objectively.
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主题建模作为一种工具来衡量Twitter feed中的政治情绪
互联网无处不在,它催生了大量的产品,这些产品永远地改变了人们对社会和政治的看法。由于Twitter是世界上最受欢迎的微博平台,本文基于Twitter微博网站收集的数据,提出了一个预测政党获胜几率的模型。使用无监督主题建模和NRC情感词典,作者展示了如何通过分析推特用户表达的八种情感来预测结果。为了证明基于实证分析的结果,作者研究了2017年第14届古吉拉特邦立法议会选举期间发布的Twitter消息。本研究实现了K-means和Latent Dirichlet Allocation两种无监督聚类方法,展示了所提出的模型如何能够基于Twitter上发布的消息的底层语义结构检查和总结观察结果。这两种著名的无监督聚类方法为本文提出的模型客观地简化决策过程提供了坚实的基础。
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