cs.AI updates on arXiv.org 09月23日
金融RAG框架:提升金融问答准确性
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本文提出了一种金融问答中的检索增强生成框架,通过利用代理AI和Multi-HyDE系统,生成多个查询,提高从大量结构化金融语料库中检索的准确性和覆盖面。该框架优化了标记效率和多步骤金融推理,在标准金融问答基准上评估,表明其能显著提高答案的准确性和可靠性。

arXiv:2509.16369v1 Announce Type: cross Abstract: Accurate and reliable knowledge retrieval is vital for financial question-answering, where continually updated data sources and complex, high-stakes contexts demand precision. Traditional retrieval systems rely on a single database and retriever, but financial applications require more sophisticated approaches to handle intricate regulatory filings, market analyses, and extensive multi-year reports. We introduce a framework for financial Retrieval Augmented Generation (RAG) that leverages agentic AI and the Multi-HyDE system, an approach that generates multiple, nonequivalent queries to boost the effectiveness and coverage of retrieval from large, structured financial corpora. Our pipeline is optimized for token efficiency and multi-step financial reasoning, and we demonstrate that their combination improves accuracy by 11.2% and reduces hallucinations by 15%. Our method is evaluated on standard financial QA benchmarks, showing that integrating domain-specific retrieval mechanisms such as Multi-HyDE with robust toolsets, including keyword and table-based retrieval, significantly enhances both the accuracy and reliability of answers. This research not only delivers a modular, adaptable retrieval framework for finance but also highlights the importance of structured agent workflows and multi-perspective retrieval for trustworthy deployment of AI in high-stakes financial applications.

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金融问答 检索增强生成 Multi-HyDE系统 准确性 金融AI
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