Detecting the research structure and topic trends of social media using static and dynamic probabilistic topic models

Muhammad Inaam ul haq, Qianmu Li, J. Hou, Adnan Iftekhar
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Abstract

PurposeA huge volume of published research articles is available on social media which evolves because of the rapid scientific advances and this paper aims to investigate the research structure of social media.Design/methodology/approachThis study employs an integrated topic modeling and text mining-based approach on 30381 Scopus index titles, abstracts, and keywords published between 2006 and 2021. It combines analytical analysis of top-cited reviews with topic modeling as means of semantic validation. The output sequences of the dynamic model are further analyzed using the statistical techniques that facilitate the extraction of topic clusters, communities, and potential inter-topic research directions.FindingsThis paper brings into vision the research structure of social media in terms of topics, temporal topic evolutions, topic trends, emerging, fading, and consistent topics of this domain. It also traces various shifts in topic themes. The hot research topics are the application of the machine or deep learning towards social media in general, alcohol consumption in different regions and its impact, Social engagement and media platforms. Moreover, the consistent topics in both models include food management in disaster, health study of diverse age groups, and emerging topics include drug violence, analysis of social media news for misinformation, and problems of Internet addiction.Originality/valueThis study extends the existing topic modeling-based studies that analyze the social media literature from a specific disciplinary viewpoint. It focuses on semantic validations of topic-modeling output and correlations among the topics and also provides a two-stage cluster analysis of the topics.
利用静态和动态概率主题模型检测社交媒体的研究结构和主题趋势
由于科学的快速进步,社交媒体上发表了大量的研究文章,本文旨在研究社交媒体的研究结构。设计/方法/方法本研究采用综合主题建模和基于文本挖掘的方法,对2006年至2021年间发表的30381个Scopus索引标题、摘要和关键词进行了研究。它结合了对高引用评论的分析分析和主题建模作为语义验证的手段。利用统计技术对动态模型的输出序列进行进一步分析,提取主题聚类、社区和潜在的主题间研究方向。研究结果从话题、话题时间演变、话题趋势、新兴话题、衰落话题和一致话题等方面对社交媒体的研究结构进行了梳理。它还追溯了主题的各种变化。热门的研究课题是机器或深度学习在社交媒体上的应用、不同地区的酒精消费及其影响、社交参与和媒体平台。此外,这两个模型中一致的主题包括灾难中的食品管理、不同年龄组的健康研究,以及新兴的主题包括毒品暴力、社交媒体新闻的错误信息分析和网络成瘾问题。原创性/价值本研究扩展了现有的基于主题建模的研究,从特定学科的角度分析社交媒体文献。它侧重于主题建模输出的语义验证和主题之间的相关性,并提供主题的两阶段聚类分析。
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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