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.
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Vinh Nguyen Phan
Long-Khanh Pham
Dang Vu
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Phan et al. (Thu,) studied this question.
www.synapsesocial.com/papers/68f04acce559138a1a06e61b — DOI: https://doi.org/10.48550/arxiv.2506.20944
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