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Can Multi-modal (reasoning) LLMs detect document manipulation?

Can Multi-modal (reasoning) LLMs detect document manipulation?

来源:Arxiv_logoArxiv
英文摘要

Document fraud poses a significant threat to industries reliant on secure and verifiable documentation, necessitating robust detection mechanisms. This study investigates the efficacy of state-of-the-art multi-modal large language models (LLMs)-including OpenAI O1, OpenAI 4o, Gemini Flash (thinking), Deepseek Janus, Grok, Llama 3.2 and 4, Qwen 2 and 2.5 VL, Mistral Pixtral, and Claude 3.5 and 3.7 Sonnet-in detecting fraudulent documents. We benchmark these models against each other and prior work on document fraud detection techniques using a standard dataset with real transactional documents. Through prompt optimization and detailed analysis of the models' reasoning processes, we evaluate their ability to identify subtle indicators of fraud, such as tampered text, misaligned formatting, and inconsistent transactional sums. Our results reveal that top-performing multi-modal LLMs demonstrate superior zero-shot generalization, outperforming conventional methods on out-of-distribution datasets, while several vision LLMs exhibit inconsistent or subpar performance. Notably, model size and advanced reasoning capabilities show limited correlation with detection accuracy, suggesting task-specific fine-tuning is critical. This study underscores the potential of multi-modal LLMs in enhancing document fraud detection systems and provides a foundation for future research into interpretable and scalable fraud mitigation strategies.

Zisheng Liang、Kidus Zewde、Rudra Pratap Singh、Disha Patil、Zexi Chen、Jiayu Xue、Yao Yao、Yifei Chen、Qinzhe Liu、Simiao Ren

计算技术、计算机技术

Zisheng Liang,Kidus Zewde,Rudra Pratap Singh,Disha Patil,Zexi Chen,Jiayu Xue,Yao Yao,Yifei Chen,Qinzhe Liu,Simiao Ren.Can Multi-modal (reasoning) LLMs detect document manipulation?[EB/OL].(2025-08-14)[2025-08-28].https://arxiv.org/abs/2508.11021.点此复制

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