Fake news travels at unprecedented speeds, reaches global audiences and puts users and communities at great risk via social media platforms. Deep learning based models show good performance when trained on large amounts of labeled data on events of interest, whereas the performance of models tends to degrade on other events due to domain shift. Therefore, significant challenges are posed for existing detection approaches to detect fake news on emergent events, where large-scale labeled datasets are difficult to obtain. Moreover, adding the knowledge from newly emergent events requires to build a new model from scratch or continue to fine-tune the model, which can be challenging, expensive, and unrealistic for real-world settings. In order to address those challenges, we propose an end-to-end fake news detection framework named MetaFEND, which is able to learn quickly to detect fake news on emergent events with a few verified posts. Specifically, the proposed model integrates meta-learning and neural process methods together to enjoy the benefits of these approaches. In particular, a label embedding module and a hard attention mechanism are proposed to enhance the effectiveness by handling categorical information and trimming irrelevant posts. Extensive experiments are conducted on multimedia datasets collected from Twitter and Weibo. The experimental results show our proposed MetaFEND model can detect fake news on never-seen events effectively and outperform the state-of-the-art methods.
翻译:以前所未有的速度进行假新闻旅行,到达全球受众,并通过社交媒体平台使用户和社区面临巨大风险。深深层次学习模式在培训大量有标签的感兴趣事件数据时表现良好,而模型的性能往往因域变换而在其他事件上下降。因此,对现有检测方法提出了重大挑战,以探测突发事件假新闻,因为大规模有标签的数据集很难获得。此外,增加新出现事件的知识需要从零开始建立新模式或继续微调该模式,这对真实世界环境来说可能是具有挑战性的、昂贵的和不现实的。为了应对这些挑战,我们提议了一个名为MetafEND的端到端的假新闻探测框架,这个框架能够迅速学习用少数经校验的日志探测突发事件假新闻。具体地说,拟议的模型将元学习和神经过程方法结合起来,以享受这些方法的好处。特别是,提议了一个标签嵌入模块和硬关注机制,以便通过处理绝对的信息和三角不相干的文章来提高该模式的有效性。为了应对这些挑战,我们提出了一个称为MetFEND的新闻探测框架的大规模实验,在多媒体数据库中,从不能够有效地显示我们所收集的模型的模拟数据。