论文标题

从#jobsearch到#mask:改进COVID-19与溢出效果的级联预测

From #Jobsearch to #Mask: Improving COVID-19 Cascade Prediction with Spillover Effects

论文作者

Chen, Ninghan, Chen, Xihui, Zhong, Zhiqiang, Pang, Jun

论文摘要

信息爆发发生在社交媒体上,以及Covid-19-19的大流行,并导致了流行病。预测在线内容的普及(称为级联预测),不仅可以提前获取值得关注的热门信息,而且还可以识别将广泛传播并需要快速响应以减轻其影响的虚假信息。在以前的作品中利用的各种信息扩散模式中,仍未研究暴露于用户参与某些信息的决定的信息的溢出效应。在本文中,我们着重于与COVID-19的预防措施相关的信息的扩散。通过收集的Twitter数据集,我们验证了这种溢出效应的存在。在这一发现的基础上,我们提出了基于图神经网络(GNN)的三种级联预测方法的扩展。在我们的数据集上进行的实验表明,鉴定出的溢出效应的使用显着改善了最新的GNNS方法在预测不仅预防措施消息的普及,而且还可以提高其他相关消息的普及。

An information outbreak occurs on social media along with the COVID-19 pandemic and leads to infodemic. Predicting the popularity of online content, known as cascade prediction, allows for not only catching in advance hot information that deserves attention, but also identifying false information that will widely spread and require quick response to mitigate its impact. Among the various information diffusion patterns leveraged in previous works, the spillover effect of the information exposed to users on their decision to participate in diffusing certain information is still not studied. In this paper, we focus on the diffusion of information related to COVID-19 preventive measures. Through our collected Twitter dataset, we validated the existence of this spillover effect. Building on the finding, we proposed 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 effect significantly improves the state-of-the-art GNNs methods in predicting the popularity of not only preventive measure messages, but also other COVID-19 related messages.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源