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
Get AI-generated summaries with premium
Get AI-generated summaries with premium
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.