论文标题

没有什么可以独自一人:使用HyperGraph神经网络进行关系假新闻检测

Nothing Stands Alone: Relational Fake News Detection with Hypergraph Neural Networks

论文作者

Jeong, Ujun, Ding, Kaize, Cheng, Lu, Guo, Ruocheng, Shu, Kai, Liu, Huan

论文摘要

如今,假新闻很容易通过在线社交网络传播,并对个人和社会构成了巨大的威胁。由于其精心制作的内容,评估新闻的真实性是具有挑战性的,因此很难获得虚假新闻数据的大规模注释。由于此类数据稀缺问题,在监督环境中检测到虚假新闻往往会失败和过度。最近,已经采用了图形神经网络(GNN)来利用标记和未标记实例之间的富裕关系信息。尽管他们有希望的结果,但它们本质上专注于新闻之间的成对关系,这可能会限制捕获集团级别传播的假新闻的表现力。例如,当我们更好地理解易感用户之间分享的新闻报道之间的关系时,检测假新闻可能会更有效。为了解决这些问题,我们建议利用超图来代表新闻之间的团体互动,同时着重于与双重级别的注意机制有关重要的新闻关系。基于两个基准数据集的实验表明,即使有一小部分标记的新闻数据,我们的方法也会产生出色的性能并保持高性能。

Nowadays, fake news easily propagates through online social networks and becomes a grand threat to individuals and society. Assessing the authenticity of news is challenging due to its elaborately fabricated contents, making it difficult to obtain large-scale annotations for fake news data. Due to such data scarcity issues, detecting fake news tends to fail and overfit in the supervised setting. Recently, graph neural networks (GNNs) have been adopted to leverage the richer relational information among both labeled and unlabeled instances. Despite their promising results, they are inherently focused on pairwise relations between news, which can limit the expressive power for capturing fake news that spreads in a group-level. For example, detecting fake news can be more effective when we better understand relations between news pieces shared among susceptible users. To address those issues, we propose to leverage a hypergraph to represent group-wise interaction among news, while focusing on important news relations with its dual-level attention mechanism. Experiments based on two benchmark datasets show that our approach yields remarkable performance and maintains the high performance even with a small subset of labeled news data.

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