A New Social Media Analytics Method for Identifying Factors Contributing to COVID-19 Discussion Topics

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Fahim Sufi
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Abstract

Since the onset of the COVID-19 crisis, scholarly investigations and policy formulation have harnessed the potent capabilities of artificial intelligence (AI)-driven social media analytics. Evidence-driven policymaking has been facilitated through the proficient application of AI and natural language processing (NLP) methodologies to analyse the vast landscape of social media discussions. However, recent research works have failed to demonstrate a methodology to discern the underlying factors influencing COVID-19-related discussion topics. In this scholarly endeavour, an innovative AI- and NLP-based framework is deployed, incorporating translation, sentiment analysis, topic analysis, logistic regression, and clustering techniques to meticulously identify and elucidate the factors that are relevant to any discussion topics within the social media corpus. This pioneering methodology is rigorously tested and evaluated using a dataset comprising 152,070 COVID-19-related tweets, collected between 15th July 2021 and 20th April 2023, encompassing discourse in 58 distinct languages. The AI-driven regression analysis revealed 37 distinct observations, with 20 of them demonstrating a higher level of significance. In parallel, clustering analysis identified 15 observations, including nine of substantial relevance. These 52 AI-facilitated observations collectively unveil and delineate the factors that are intricately linked to five core discussion topics that are prevalent in the realm of COVID-19 discourse on Twitter. To the best of our knowledge, this research constitutes the inaugural effort in autonomously identifying factors associated with COVID-19 discussion topics, marking a pioneering application of AI algorithms in this domain. The implementation of this method holds the potential to significantly enhance the practice of evidence-based policymaking pertaining to matters concerning COVID-19.
一种新的社交媒体分析方法,用于识别促成COVID-19讨论主题的因素
自2019冠状病毒病危机爆发以来,学术调查和政策制定利用了人工智能(AI)驱动的社交媒体分析的强大能力。通过熟练应用人工智能和自然语言处理(NLP)方法来分析社交媒体讨论的广阔前景,促进了循证驱动的政策制定。然而,最近的研究工作未能证明一种方法来识别影响covid -19相关讨论主题的潜在因素。在这项学术努力中,部署了一个创新的基于AI和nlp的框架,结合翻译,情感分析,主题分析,逻辑回归和聚类技术,精心识别和阐明与社交媒体语料库中任何讨论主题相关的因素。这一开创性的方法经过了严格的测试和评估,使用的数据集包括2021年7月15日至2023年4月20日期间收集的152,070条与covid -19相关的推文,包括58种不同语言的话语。人工智能驱动的回归分析揭示了37个不同的观察结果,其中20个显示出更高水平的显著性。同时,聚类分析确定了15个观察结果,其中9个具有实质性的相关性。这52项人工智能促成的观察结果共同揭示和描绘了与推特上关于COVID-19的讨论领域中普遍存在的五个核心讨论主题错综复杂相关的因素。据我们所知,这项研究是自主识别与COVID-19讨论主题相关因素的首次努力,标志着人工智能算法在该领域的开创性应用。该方法的实施有可能大大加强在COVID-19相关事项方面的循证决策实践。
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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来源期刊
Information (Switzerland)
Information (Switzerland) Computer Science-Information Systems
CiteScore
6.90
自引率
0.00%
发文量
515
审稿时长
11 weeks
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