基于GCN的微博谣言检测

Q. Zhang, Yongzhi Zhu, Chuanhao Lan, Qinghang Mao, Yikai Cui
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引用次数: 0

摘要

在信息爆炸的时代,谣言会造成很大的危害,影响社会稳定。大多数谣言检测方法集中于从内容和消费者信息中提取特征。我们提出了一种全新的早期谣言识别方法,MSR-GAT。首先,将源文本和评论文本融合为节点特征,并将事件之间的关系视为边缘信息;然后,构造图注意模型对节点进行分类,完成谣言检测。实验结果表明,该检测算法在准确率、精密度、召回率和F1-Measure等方面均优于基线算法。它可以准确地识别谣言。
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Weibo rumor detection based on GCN
In the era of information explosion, rumors will cause great harm and affect social stability. Most rumor detection methods concentrate on extracting features from content and consumer information. We propose a brand-new approach to early rumor identification, MSR-GAT. Firstly, the source text and comment text are fused as node features and the relation between events is considered edge information. Then, the graph attention model is constructed to classify nodes and complete rumor detection. The experimental findings demonstrate that the detection algorithm outperforms the baselines algorithm in accuracy, precision, recall and F1-Measure. It can accurately identify rumors.
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