量化科威特社交网络中争议性讨论的变化

Yeonjung Lee, Hana Alostad, Hasan Davulcu
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摘要

在 COVID-19 大流行期间,出现了支持接种疫苗和反对接种疫苗的团体,影响他人接种疫苗或放弃接种疫苗,并引发了两极分化的争论。由于用户数据不完整以及社交网络互动的复杂性,了解这些讨论的动态具有挑战性。本研究旨在发现和量化科威特社交网络中与疫苗立场有关的争议的驱动因素。为了应对这些挑战,我们利用图卷积网络(GCN)和特征传播(FP),在特征不完整的情况下准确检测用户的立场,准确率达到 96%。此外,还采用了随机漫步争议(RWC)得分来量化社交网络中的极化点。在科威特 COVID-19 疫苗推广期间,我们使用 X(前 Twitter)上与疫苗相关的转发和讨论数据集进行了实验。分析结果显示,两极分化的高发期与特定的疫苗接种率和政府公告相关。这项研究提供了一种新颖的方法,无需昂贵的注释即可准确检测低资源语言(如科威特方言)中的用户立场,为帮助政策制定者了解民意和有效解决误导问题提供了宝贵的见解。
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Quantifying Variations in Controversial Discussions within Kuwaiti Social Networks
During the COVID-19 pandemic, pro-vaccine and anti-vaccine groups emerged, influencing others to vaccinate or abstain and leading to polarized debates. Due to incomplete user data and the complexity of social network interactions, understanding the dynamics of these discussions is challenging. This study aims to discover and quantify the factors driving the controversy related to vaccine stances across Kuwaiti social networks. To tackle these challenges, a graph convolutional network (GCN) and feature propagation (FP) were utilized to accurately detect users’ stances despite incomplete features, achieving an accuracy of 96%. Additionally, the random walk controversy (RWC) score was employed to quantify polarization points within the social networks. Experiments were conducted using a dataset of vaccine-related retweets and discussions from X (formerly Twitter) during the Kuwait COVID-19 vaccine rollout period. The analysis revealed high polarization periods correlating with specific vaccination rates and governmental announcements. This research provides a novel approach to accurately detecting user stances in low-resource languages like the Kuwaiti dialect without the need for costly annotations, offering valuable insights to help policymakers understand public opinion and address misinformation effectively.
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