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Detecting fake news by exploring the consistency of multimodal data

机译:通过探索多模式数据的一致性来检测假新闻

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During the outbreak of the new Coronavirus (2019-nCoV) in 2020, the spread of fake news has caused serious social panic. Fake news often uses multimedia information such as text and image to mislead readers, spreading and expanding its influence. One of the most important problems in fake news detection based on multimodal data is to extract the general features as well as to fuse the intrinsic characteristics of the fake news, such as mismatch of image and text and image tampering. This paper proposes a Multimodal Consistency Neural Network (MCNN) that considers the consistency of multimodal data and captures the overall characteristics of social media information. Our method consists of five subnetworks: the text feature extraction module, the visual semantic feature extraction module, the visual tampering feature extraction module, the similarity measurement module, and the multimodal fusion module. The text feature extraction module and the visual semantic feature extraction module are responsible for extracting the semantic features of text and vision and mapping them to the same space for a common representation of cross-modal features. The visual tampering feature extraction module is responsible for extracting visual physical and tamper features. The similarity measurement module can directly measure the similarity of multimodal data for the problem of mismatching of image and text. We assess the constructed method in terms of four datasets commonly used for fake news detection. The accuracy of the detection is improved clearly compared to the best available methods.
机译:在2020年爆发新的冠状病毒(2019-NCOV)期间,假新闻的传播导致了严重的社会恐慌。假新闻通常使用文本和图像等多媒体信息来误导读者,传播和扩大其影响。基于多模式数据的假新闻检测中最重要的问题之一是提取一般特征,并融合假新闻的内在特征,例如图像和文本不匹配和图像篡改。本文提出了一种多模式一致性神经网络(MCNN),其考虑多模式数据的一致性并捕获社交媒体信息的整体特征。我们的方法由五个子网组成:文本特征提取模块,可视化语义特征提取模块,视觉篡改特征提取模块,相似度测量模块和多峰融合模块。文本特征提取模块和视觉语义特征提取模块负责提取文本和愿景的语义特征,并将其映射到相同的空间,以进行跨模型特征的公共表示。视觉篡改特征提取模块负责提取视觉物理和篡改功能。相似度测量模块可以直接测量多模数据数据的相似性,以便图像和文本不匹配的问题。我们在常用于假新闻检测的四个数据集方面评估构建的方法。与最佳可用方法相比,检测的准确性得到改善。

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