Exploring Spillover Effects for COVID-19 Cascade Prediction.
Ninghan ChenXihui ChenZhiqiang ZhongJun PangPublished in: Entropy (Basel, Switzerland) (2022)
An information outbreak occurs on social media along with the COVID-19 pandemic and leads to an infodemic . Predicting the popularity of online content, known as cascade prediction , allows for not only catching in advance information that deserves attention, but also identifying false information that will widely spread and require quick response to mitigate its negative impact. Among the various information diffusion patterns leveraged in previous works, the spillover effect of the information exposed to users on their decisions to participate in diffusing certain information has not been studied. In this paper, we focus on the diffusion of information related to COVID-19 preventive measures due to its special role in consolidating public efforts to slow down the spread of the virus. Through our collected Twitter dataset, we validate the existence of the spillover effects. Building on this finding, we propose extensions to three cascade prediction methods based on Graph Neural Networks (GNNs). Experiments conducted on our dataset demonstrated that the use of the identified spillover effects significantly improves the state-of-the-art GNN methods in predicting the popularity of not only preventive measure messages, but also other COVID-19 messages.