Comparing Topic Modeling Techniques for Identifying Informative and Uninformative Content: A Case Study on COVID-19 Tweets

Qaisar Khan, Hui Na Chua
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引用次数: 5

Abstract

It is essential to understand what topics related to the COVID19 pandemic forms informative and uninformative content on social networks instead of general information (which contains both informative and uninformative). Uninformative content is mainly based on personal opinions and is more suitable for sentimental analysis. Whereas informative content is based on facts, figures, and reports; therefore, it is beneficial to gain a more in-depth understanding for a better strategic response to COVID-19. Despite knowing this fact, there is still a lack of study performed to investigate the aspects of informative content to gain an in-depth understanding of COVID-19 discussed topics. We aim to fill this gap through the study presented in this paper. We used the dataset containing 4719 “informative” and 5281 “uninformative” labeled tweets to realize informative aspects. Latent Dirichlet Allocation (LDA) and Latent Semantic Analysis (LSA) are popular topic modeling techniques. However, since both are based on an unsupervised approach, it is still unknown whether LDA or LSA effectively categorizes documents and how an appropriate number of topics can be determined. Therefore, we used both techniques to analyze tweets' content. Results show that LDA outperforms LSA by achieving a topic coherence score of 0.619 on uninformative and 0.599 on informative. In addition, based on LDA's results, it is also observed that most of the words that form informative content are death, case, coronavirus, people, confirmed, total, positive, tested, number, reported indicating tested, and death cases are the most concerned topics. On the other hand, words like immunity, fatality, protocol, thread, tourist, queue, blockade, eradication, prediction, detention, concerned are most likely to form uninformative content.
比较识别信息和非信息内容的主题建模技术:以COVID-19推文为例
了解与covid - 19大流行相关的主题在社交网络上形成了信息性和非信息性内容,而不是一般信息(既包含信息性内容,也包含非信息性内容),这一点至关重要。非信息性内容主要基于个人观点,更适合情感分析。而信息性内容是基于事实、数据和报告;因此,对更好地战略应对COVID-19有更深入的了解是有益的。尽管知道这一事实,但仍然缺乏研究来调查信息内容的各个方面,以深入了解COVID-19讨论的主题。我们的目标是通过本文的研究来填补这一空白。我们使用包含4719条“信息”和5281条“非信息”标记的推文数据集来实现信息方面。潜在狄利克雷分配(LDA)和潜在语义分析(LSA)是目前流行的主题建模技术。然而,由于两者都基于一种无监督的方法,所以LDA或LSA是否能有效地对文档进行分类以及如何确定适当数量的主题仍然是未知的。因此,我们使用这两种技术来分析tweet的内容。结果表明,LDA在非信息性和信息性方面的主题一致性得分分别为0.619和0.599,优于LSA。此外,根据LDA的结果,还可以观察到,构成信息内容的词汇最多的是死亡、病例、冠状病毒、人、确诊、总数、阳性、检测、数字、报告指示检测和死亡病例。另一方面,免疫、死亡、协议、线程、游客、队列、封锁、根除、预测、拘留、关注等词最容易形成非信息性内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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