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Adversarial Active Learning Based Heterogeneous Graph Neural Network for Fake News Detection

机译:基于对抗的非均质图形神经网络假新闻检测

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The explosive growth of fake news along with destructive effects on politics, economy, and public safety has increased the demand for fake news detection. Fake news on social media does not exist independently in the form of an article. Many other entities, such as news creators, news subjects, and so on, exist on social media and have relationships with news articles. Different entities and relationships can be modeled as a heterogeneous information network (HIN). In this paper, we attempt to solve the fake news detection problem with the support of a news-oriented HIN. We propose a novel fake news detection framework, namely Adversarial Active Learning-based Heterogeneous Graph Neural Network (AA-HGNN) which employs a novel hierarchical attention mechanism to perform node representation learning in the HIN. AA-HGNN utilizes an active learning framework to enhance learning performance, especially when facing the paucity of labeled data. An adversarial selector will be trained to query high-value candidates for the active learning framework. When the adversarial active learning is completed, AA-HGNN detects fake news by classifying news article nodes. Experiments with two real-world fake news datasets show that our model can outperform text-based models and other graph-based models when using less labeled data benefiting from the adversarial active learning. As a model with generalizability, AA-HGNN also has the ability to be widely used in other node classification-related applications on heterogeneous graphs.
机译:假新闻的爆炸性增长以及对政治,经济和公共安全的破坏性影响增加了对假新闻检测的需求。社交媒体上的假新闻并不完全以文章的形式存在。许多其他实体,例如新闻创作者,新闻科目等,存在于社交媒体上,并与新闻文章有关系。不同的实体和关系可以被建模为异构信息网络(HIN)。在本文中,我们试图解决虚假的新闻检测问题,并支持一系列导向的HIN。我们提出了一种新颖的假新闻检测框架,即穿越主动学习的异构图形神经网络(AA-HGNN),其采用了一种新的分层关注机制来在HIN中执行节点表示学习。 AA-HGNN利用主动学习框架来增强学习性能,尤其是面对标记数据的缺乏时。将培训对抗性选择器以查询活动学习框架的高价值候选。当对抗性主动学习完成时,AA-HGNN通过分类新闻文章节点来检测假新闻。两个真实世界假新闻数据集的实验表明,我们的模型可以在使用较少标记的数据受益于对抗性主动学习时表现出基于文本的模型和其他基于图形的模型。作为具有普遍性的模型,AA-HGNN还具有在异构图中广泛用于其他节点分类相关应用的能力。

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