MONITOR: A Multimodal Fusion Framework to Assess Message Veracity in Social Networks
Abderrazek Azri (ERIC), C\'ecile Favre (ERIC), Nouria Harbi (ERIC),, J\'er\^ome Darmont (ERIC), Camille No\^us

TL;DR
This paper introduces MONITOR, a multimodal framework that combines text, social context, and advanced image features to improve rumor detection accuracy on social media, demonstrating significant performance gains over existing methods.
Contribution
The paper proposes a novel multimodal fusion framework, MONITOR, integrating advanced image quality metrics with textual and social features for more accurate rumor verification.
Findings
Achieved 96% accuracy on MediaEval benchmark
Achieved 89% accuracy on FakeNewsNet dataset
Significantly outperforms state-of-the-art baselines
Abstract
Users of social networks tend to post and share content with little restraint. Hence, rumors and fake news can quickly spread on a huge scale. This may pose a threat to the credibility of social media and can cause serious consequences in real life. Therefore, the task of rumor detection and verification has become extremely important. Assessing the veracity of a social media message (e.g., by fact checkers) involves analyzing the text of the message, its context and any multimedia attachment. This is a very time-consuming task that can be much helped by machine learning. In the literature, most message veracity verification methods only exploit textual contents and metadata. Very few take both textual and visual contents, and more particularly images, into account. In this paper, we second the hypothesis that exploiting all of the components of a social media post enhances the accuracy…
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