Consistency-Heterogenity Balanced Fake News Detection via Cross-Modal Matching

Published in IEEE Transactions on Artificial Intelligence, 2025

Abstract: Generating synthetic content through generative AI (GAI) presents considerable hurdles for current fake news detection methodologies. Many existing detection approaches concentrate on feature-based multimodal fusion, neglecting semantic relationships such as correlations and diversities. In this study, we introduce an innovative cross-modal matching-driven approach to reconcile semantic relevance (text-image consistency) and semantic gap (text-image heterogeneity) in multimodal fake news detection. Unlike the conventional paradigm of multimodal fusion followed by detection, our approach integrates textual modality, visual modality (images), and text embedded within images (auxiliary modality) to construct an end-to-end framework. This framework considers the relevance of contents across different modalities while simultaneously addressing the gap in structures, achieving a delicate balance between consistency and heterogeneity. Consistency is fostered by evaluating intermodality correlation via pairwise-similarity scores, while heterogeneity is addressed by employing cross-attention mechanisms to account for intermodality diversity. To achieve equilibrium between consistency and heterogeneity, we employ attention-guided enhanced modality interaction and similarity-based dynamic weight assignment to establish robust frameworks. Comparative experiments conducted on the Chinese Weibo dataset and the English Twitter dataset demonstrate the effectiveness of our approach, surpassing the state-of-the-art by 7% to 13%.

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Recommended citation: Y. Guo et al., “Consistency-Heterogenity Balanced Fake News Detection via Cross-Modal Matching,” in IEEE Transactions on Artificial Intelligence, vol. 6, no. 7, pp. 1787-1796, July 2025, doi: 10.1109/TAI.2025.3527921.