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基于图神经网络的层次聚合特征的社交媒体谣言检测

Rumor detection on social media using hierarchically aggregated feature via graph neural networks.

作者信息

Xu Shouzhi, Liu Xiaodi, Ma Kai, Dong Fangmin, Riskhan Basheer, Xiang Shunzhi, Bing Changsong

机构信息

College of Computer and Information Technology, China Three Gorges University, Yichang, 443002 China.

出版信息

Appl Intell (Dordr). 2023;53(3):3136-3149. doi: 10.1007/s10489-022-03592-3. Epub 2022 May 21.

Abstract

In the era of the Internet and big data, online social media platforms have been developing rapidly, which accelerate rumors circulation. Rumor detection on social media is a worldwide challenging task due to rumor's feature of high speed, fragmental information and extensive range. Most existing approaches identify rumors based on single-layered hybrid features like word features, sentiment features and user characteristics, or multimodal features like the combination of text features and image features. Some researchers adopted the hierarchical structure, but they neither used rumor propagation nor made full use of its retweet posts. In this paper, we propose a novel model for rumor detection based on Graph Neural Networks (GNN), named (HAGNN). This task focuses on capturing different granularities of high-level representations of text content and fusing the rumor propagation structure. It applies a Graph Convolutional Network (GCN) with a graph of rumor propagation to learn the text-granularity representations with the spreading of events. A GNN model with a document graph is employed to update aggregated features of both word and text granularity, it helps to form final representations of events to detect rumors. Experiments on two real-world datasets demonstrate the superiority of the proposed method over the baseline methods. Our model achieves the accuracy of 95.7 and 88.2 on the Weibo dataset Ma et al. 2017 and the CED dataset Song et al. IEEE Trans Knowl Data Eng 33(8):3035-3047, 2019respectively.

摘要

在互联网和大数据时代,在线社交媒体平台发展迅速,这加速了谣言的传播。由于谣言具有传播速度快、信息碎片化和范围广泛的特点,社交媒体上的谣言检测是一项全球性的挑战性任务。大多数现有方法基于单词特征、情感特征和用户特征等单层混合特征,或文本特征与图像特征相结合等多模态特征来识别谣言。一些研究人员采用了层次结构,但他们既没有利用谣言传播,也没有充分利用其转发帖子。在本文中,我们提出了一种基于图神经网络(GNN)的谣言检测新模型,名为(HAGNN)。这项任务侧重于捕捉文本内容的不同粒度的高级表示,并融合谣言传播结构。它应用一个带有谣言传播图的图卷积网络(GCN),随着事件的传播来学习文本粒度的表示。使用一个带有文档图的GNN模型来更新单词和文本粒度的聚合特征,这有助于形成事件的最终表示以检测谣言。在两个真实世界数据集上的实验证明了所提出方法相对于基线方法的优越性。我们的模型在微博数据集(Ma等人,2017年)和CED数据集(Song等人,《IEEE知识与数据工程汇刊》,第33卷第8期,第3035 - 3047页,2019年)上分别达到了95.7和88.2的准确率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/49a5/9122810/be73609bf24c/10489_2022_3592_Fig1_HTML.jpg

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