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SAFE: Similarity-Aware Multi-Modal Fake News Detection

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Effective detection of fake news has recently attracted significant attention. Current studies have made significant contributions to predicting fake news with less focus on exploiting the relationship (similarity) between the textual and visual information in news articles. Attaching importance to such similarity helps identify fake news stories that, for example, attempt to use irrelevant images to attract readers' attention. In this work, we propose a $\mathsf{S}$imilarity-$\mathsf{A}$ware $\mathsf{F}$ak$\mathsf{E}$ news detection method ($\mathsf{SAFE}$) which investigates multi-modal (textual and visual) information of news articles. First, neural networks are adopted to separately extract textual and visual features for news representation. We further investigate the relationship between the extracted features across modalities. Such representations of news textual and visual information along with their relationship are jointly learned and used to predict fake news. The proposed method facilitates recognizing the falsity of news articles based on their text, images, or their "mismatches." We conduct extensive experiments on large-scale real-world data, which demonstrate the effectiveness of the proposed method.

Xinyi Zhou, Jindi Wu, Reza Zafarani• 2020

Related benchmarks

TaskDatasetResultRank
Fake News DetectionWeibo
Accuracy0.762
32
Fake News DetectionWeibo21
Accuracy90.5
17
Multimodal misinformation detectionTwitter
Accuracy76.2
10
Multimodal misinformation detectionWeibo
Accuracy0.816
10
Out-of-Context Misinformation DetectionNewsCLIPpings Merged Balanced (test)
Overall Accuracy52.8
8
Fake News DetectionPolitifact (POL)
Accuracy73.3
7
Fake News DetectionGossipcop (GOS)
Accuracy77.37
7
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