Paper ID: 2501.14455 • Published Jan 24, 2025
Triple Path Enhanced Neural Architecture Search for Multimodal Fake News Detection
Bo Xu, Qiujie Xie, Jiahui Zhou, Linlin Zong
TL;DR
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Multimodal fake news detection has become one of the most crucial issues on
social media platforms. Although existing methods have achieved advanced
performance, two main challenges persist: (1) Under-performed multimodal news
information fusion due to model architecture solidification, and (2) weak
generalization ability on partial-modality contained fake news. To meet these
challenges, we propose a novel and flexible triple path enhanced neural
architecture search model MUSE. MUSE includes two dynamic paths for detecting
partial-modality contained fake news and a static path for exploiting potential
multimodal correlations. Experimental results show that MUSE achieves stable
performance improvement over the baselines.