Unraveling the Use of Disinformation Hashtags by Social Bots During the COVID-19 Pandemic: Social Networks Analysis.

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES
JMIR infodemiology Pub Date : 2025-01-09 DOI:10.2196/50021
Victor Suarez-Lledo, Esther Ortega-Martin, Jesus Carretero-Bravo, Begoña Ramos-Fiol, Javier Alvarez-Galvez
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引用次数: 0

Abstract

Background: During the COVID-19 pandemic, social media platforms have been a venue for the exchange of messages, including those related to fake news. There are also accounts programmed to disseminate and amplify specific messages, which can affect individual decision-making and present new challenges for public health.

Objective: This study aimed to analyze how social bots use hashtags compared to human users on topics related to misinformation during the outbreak of the COVID-19 pandemic.

Methods: We selected posts on specific topics related to infodemics such as vaccines, hydroxychloroquine, military, conspiracy, laboratory, Bill Gates, 5G, and UV. We built a network based on the co-occurrence of hashtags and classified the posts based on their source. Using network analysis and community detection algorithms, we identified hashtags that tend to appear together in messages. For each topic, we extracted the most relevant subtopic communities, which are groups of interconnected hashtags.

Results: The distribution of bots and nonbots in each of these communities was uneven, with some sets of hashtags being more common among accounts classified as bots or nonbots. Hashtags related to the Trump and QAnon social movements were common among bots, and specific hashtags with anti-Asian sentiments were also identified. In the subcommunities most populated by bots in the case of vaccines, the group of hashtags including #billgates, #pandemic, and #china was among the most common.

Conclusions: The use of certain hashtags varies depending on the source, and some hashtags are used for different purposes. Understanding these patterns may help address the spread of health misinformation on social media networks.

解开社交机器人在COVID-19大流行期间使用虚假信息标签:社交网络分析。
背景:在2019冠状病毒病大流行期间,社交媒体平台成为交流信息的场所,包括与假新闻有关的信息。还有一些账户被规划用于传播和放大具体信息,这些信息可能影响个人决策,并对公共卫生构成新的挑战。目的:本研究旨在分析在COVID-19大流行爆发期间,与人类用户相比,社交机器人如何在与错误信息相关的主题上使用标签。方法:选择与疫苗、羟氯喹、军事、阴谋、实验室、比尔·盖茨、5G、紫外线等信息相关的特定主题的帖子。我们基于标签的共现性建立了一个网络,并根据其来源对帖子进行分类。使用网络分析和社区检测算法,我们确定了倾向于在消息中一起出现的话题标签。对于每个主题,我们提取了最相关的子主题社区,这些子主题社区是一组相互关联的标签。结果:在这些社区中,机器人和非机器人的分布是不均匀的,一些标签组在被分类为机器人或非机器人的账户中更为常见。与特朗普和QAnon社会运动相关的标签在机器人中很常见,而且还发现了带有反亚洲情绪的特定标签。以疫苗为例,在机器人最多的亚社区中,包括#比尔盖茨、#大流行和#中国在内的标签组是最常见的。结论:某些标签的使用因来源而异,一些标签的使用目的也不同。了解这些模式可能有助于解决社交媒体网络上健康错误信息的传播。
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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CiteScore
4.80
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