Focusing on Relevant Responses for Multi-modal Rumor Detection
Jun Li, Yi Bin, Liang Peng, Yang Yang, Yangyang Li, Hao Jin, and Zi, Huang

TL;DR
This paper introduces FoRM, a multi-modal rumor detection model that selectively focuses on relevant responses and performs detailed reasoning across text and images to improve rumor verification accuracy.
Contribution
The paper proposes a novel multi-modal rumor detection approach with a two-stage process: coarse response relevance filtering and fine-grained relation reasoning, enhancing detection performance.
Findings
Outperforms baseline models on real-world datasets
Effectively filters irrelevant responses to improve accuracy
Utilizes relation attention for detailed multi-modal reasoning
Abstract
In the absence of an authoritative statement about a rumor, people may expose the truth behind such rumor through their responses on social media. Most rumor detection methods aggregate the information of all the responses and have made great progress. However, due to the different backgrounds of users, the responses have different relevance for discovering th suspicious points hidden in a rumor claim. The methods that focus on all the responding tweets would dilute the effect of the critical ones. Moreover, for a multi-modal rumor claim, the focus of a user may be on several words in the text or an object in the image, so the different modalities should be considered to select the relevant responses and verify the claim. In this paper, we propose a novel multi-modal rumor detection model, termed Focal Reasoning Model (FoRM), to filter out the irrelevant responses and further conduct…
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Taxonomy
TopicsMisinformation and Its Impacts · Advanced Text Analysis Techniques · Topic Modeling
