基于知识关系的异构图神经网络假新闻检测

Bingbing Xie, Xiaoxia Ma, Jia Wu, Jian Yang, Shan Xue, Hao Fan
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引用次数: 0

摘要

社交媒体上假新闻的泛滥已经被认为是一个严重的社会问题,人们一直在努力检测假新闻,以减轻其有害影响。知识图谱(Knowledge graphs, KGs)包含了真实实体之间丰富的事实关系,可以作为基础真相数据库,增强假新闻的检测能力。然而,现有的方法大多只是利用自然语言处理和图挖掘技术来提取假新闻的特征进行检测,很少对知识图中的基础知识进行挖掘。在这项工作中,我们提出了一种新的基于知识关系的异构图神经网络用于假新闻检测(HGNNR4FD)。所设计的框架有四个主要组成部分:1)基于新闻内容构建的异构图(HG),包括三种类型的节点,即新闻、实体和主题及其关系。2) KG,通过KG中的关系生成嵌入,为检测假新闻提供事实基础。3)基于注意力的异质图神经网络,能够聚合HG和KG的信息;4)假新闻检测器,能够基于HGNNR4FD生成的新闻嵌入来识别假新闻。通过与七个最先进的基线进行比较,我们进一步验证了我们方法的性能,并通过彻底的烧蚀分析验证了组件的有效性。从结果中,我们通过经验证明,我们的框架在四个真实数据集上取得了卓越的结果,并且在准确度、精度、召回率和f1分数的评估指标方面优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous Graph Neural Network via Knowledge Relations for Fake News Detection
The proliferation of fake news in social media has been recognized as a severe problem for society, and substantial attempts have been devoted to fake news detection to alleviate the detrimental impacts. Knowledge graphs (KGs) comprise rich factual relations among real entities, which could be utilized as ground-truth databases and enhance fake news detection. However, most of the existing methods only leveraged natural language processing and graph mining techniques to extract features of fake news for detection and rarely explored the ground knowledge in knowledge graphs. In this work, we propose a novel Heterogeneous Graph Neural Network via Knowledge Relations for Fake News Detection (HGNNR4FD). The devised framework has four major components: 1) A heterogeneous graph (HG) built upon news content, including three types of nodes, i.e., news, entities, and topics, and their relations. 2) A KG that provides the factual basis for detecting fake news by generating embeddings via relations in the KG. 3) A novel attention-based heterogeneous graph neural network that can aggregate information from HG and KG, and 4) a fake news detector, which is capable of identifying fake news based on the news embeddings generated by HGNNR4FD. We further validate the performance of our method by comparison with seven state-of-art baselines and verify the effectiveness of the components through a thorough ablation analysis. From the results, we empirically demonstrate that our framework achieves superior results and yields improvement over the baselines regarding evaluation metrics of accuracy, precision, recall, and F1-score on four real-world datasets.
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