Detection of fake news is crucial to ensure the authenticity of information and maintain the news ecosystems reliability. Recently, there has been an increase in fake news content due to the recent proliferation of social media and fake content generation techniques such as Deep Fake. The majority of the existing modalities of fake news detection focus on content based approaches. However, most of these techniques fail to deal with ultra realistic synthesized media produced by generative models. Our recent studies find that the propagation characteristics of authentic and fake news are distinguishable, irrespective of their modalities. In this regard, we have investigated the auxiliary information based on social context to detect fake news. This paper has analyzed the social context of fake news detection with a hybrid graph neural network based approach. This hybrid model is based on integrating a graph neural network on the propagation of news and bi directional encoder representations from the transformers model on news content to learn the text features. Thus this proposed approach learns the content as well as the context features and hence able to outperform the baseline models with an f1 score of 0.91 on PolitiFact and 0.93 on the Gossipcop dataset, respectively
翻译:最近,由于社交媒体和假内容生成技术(如Deep Fake)的最近扩散,假新闻内容有所增加。目前大多数假新闻检测方式都以内容为基础的方法为重点。然而,这些技术大多无法处理由基因模型产生的超现实综合媒体。我们最近的研究发现,真实和假新闻的传播特征是可辨别的,而不论其方式如何。在这方面,我们调查了基于社会背景的辅助信息,以探测假新闻。本文分析了假新闻检测的社会背景,以混合图形神经网络为基础的方法分析了假新闻检测的社会背景。这种混合模型的基础是将关于传播新闻的图形神经网络和变异器模型的双方向编码器演示结合起来,以学习文字特征。因此,拟议的方法既学习内容,也学习上下文特征,从而能够超越基线模型,分别是F1分的Politifact和Gosipcro数据集的F1分和0.93分的F1分。