Multimodal Disinformation Detection with Joint Propagation Structure

Shenwu Zhangl, Xinyang Ding, Weiguang Liu, Hailong Zhao
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引用次数: 1

Abstract

The spread of disinformation can easily bring serious consequences for society. This means the detection of disinformation cannot be ignored. Current research on multimodal disinformation detection tends to ignore the influence of propagation structure. Therefore, this paper proposes a multimodal disinformation detection method based on text, images and the propagation structure, which learns new text structure features from a heterogeneous graphical model based on global-local relationships and then splices the new text structure features with traditional text auxiliary features. Finally, the picture features are combined with the text features obtained after the splicing to obtain the multimodal joint representation. The experimental results show that our model has higher accuracy and stronger generalization ability compared with the related multimodal models on the microblogging dataset.
基于联合传播结构的多模态假信息检测
虚假信息的传播很容易给社会带来严重的后果。这意味着对虚假信息的检测不能被忽视。目前对多模态虚假信息检测的研究往往忽略了传播结构的影响。因此,本文提出了一种基于文本、图像和传播结构的多模态假信息检测方法,该方法从基于全局-局部关系的异构图形模型中学习新的文本结构特征,然后将新的文本结构特征与传统的文本辅助特征拼接在一起。最后,将图像特征与拼接后得到的文本特征结合,得到多模态联合表示。实验结果表明,与微博数据集上的相关多模态模型相比,我们的模型具有更高的准确率和更强的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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