计算机科学
中心性
百万-
人工智能
特征工程
机器学习
图形
分析
数据科学
理论计算机科学
数据挖掘
深度学习
数学
组合数学
天文
物理
作者
Ching Nam Hang,Pei-Duo Yu,Siya Chen,Chee Wei Tan,Guanrong Chen
标识
DOI:10.1109/jbhi.2023.3314632
摘要
The COVID-19 pandemic brought not only global devastation but also an unprecedented infodemic of false or misleading information that spread rapidly through online social networks. Network analysis plays a crucial role in the science of fact-checking by modeling and learning the risk of infodemics through statistical processes and computation on mega-sized graphs. This article proposes MEGA, Machine Learning-Enhanced Graph Analytics, a framework that combines feature engineering and graph neural networks to enhance the efficiency of learning performance involving massive graphs. Infodemic risk analysis is a unique application of the MEGA framework, which involves detecting spambots by counting triangle motifs and identifying influential spreaders by computing the distance centrality. The MEGA framework is evaluated using the COVID-19 pandemic Twitter dataset, demonstrating superior computational efficiency and classification accuracy.
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