E-FreeM2: Efficient Training-Free Multi-Scale and Cross-Modal News Verification via MLLMs
E-FreeM2: Efficient Training-Free Multi-Scale and Cross-Modal News Verification via MLLMs
The rapid spread of misinformation in mobile and wireless networks presents critical security challenges. This study introduces a training-free, retrieval-based multimodal fact verification system that leverages pretrained vision-language models and large language models for credibility assessment. By dynamically retrieving and cross-referencing trusted data sources, our approach mitigates vulnerabilities of traditional training-based models, such as adversarial attacks and data poisoning. Additionally, its lightweight design enables seamless edge device integration without extensive on-device processing. Experiments on two fact-checking benchmarks achieve SOTA results, confirming its effectiveness in misinformation detection and its robustness against various attack vectors, highlighting its potential to enhance security in mobile and wireless communication environments.
Van-Hoang Phan、Long-Khanh Pham、Dang Vu、Anh-Duy Tran、Minh-Son Dao
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Van-Hoang Phan,Long-Khanh Pham,Dang Vu,Anh-Duy Tran,Minh-Son Dao.E-FreeM2: Efficient Training-Free Multi-Scale and Cross-Modal News Verification via MLLMs[EB/OL].(2025-06-26)[2025-07-16].https://arxiv.org/abs/2506.20944.点此复制
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