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Findings of Factify 2: Multimodal Fake News Detection

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arxiv 2307.10475 v2 pith:4VQ5KZ3D submitted 2023-07-19 cs.CL cs.CV

Findings of Factify 2: Multimodal Fake News Detection

classification cs.CL cs.CV
keywords newsfaketaskclassesdetectionfactifyimagemedia
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With social media usage growing exponentially in the past few years, fake news has also become extremely prevalent. The detrimental impact of fake news emphasizes the need for research focused on automating the detection of false information and verifying its accuracy. In this work, we present the outcome of the Factify 2 shared task, which provides a multi-modal fact verification and satire news dataset, as part of the DeFactify 2 workshop at AAAI'23. The data calls for a comparison based approach to the task by pairing social media claims with supporting documents, with both text and image, divided into 5 classes based on multi-modal relations. In the second iteration of this task we had over 60 participants and 9 final test-set submissions. The best performances came from the use of DeBERTa for text and Swinv2 and CLIP for image. The highest F1 score averaged for all five classes was 81.82%.

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  1. Evidence Triangulation for Multimodal Fact-Checking in the Wild

    cs.MM 2026-06 unverdicted novelty 6.0

    X-POSE is a real-world multimodal fact-checking benchmark from X posts and news articles; TRENT is a model with parallel cross-attention and entailment/contradiction fusion that outperforms prior specialized models and VLMs.