DocDancer:迈向基于文档的自主信息搜索智能体 / DocDancer: Towards Agentic Document-Grounded Information Seeking
1️⃣ 一句话总结
这篇论文提出了一个名为DocDancer的开源智能体,它通过创新的工具驱动框架和自动生成训练数据的方法,显著提升了从长文档中自主搜索和回答问题的能力。
Document Question Answering (DocQA) focuses on answering questions grounded in given documents, yet existing DocQA agents lack effective tool utilization and largely rely on closed-source models. In this work, we introduce DocDancer, an end-to-end trained open-source Doc agent. We formulate DocQA as an information-seeking problem and propose a tool-driven agent framework that explicitly models document exploration and comprehension. To enable end-to-end training of such agents, we introduce an Exploration-then-Synthesis data synthesis pipeline that addresses the scarcity of high-quality training data for DocQA. Training on the synthesized data, the trained models on two long-context document understanding benchmarks, MMLongBench-Doc and DocBench, show their effectiveness. Further analysis provides valuable insights for the agentic tool design and synthetic data.
DocDancer:迈向基于文档的自主信息搜索智能体 / DocDancer: Towards Agentic Document-Grounded Information Seeking
这篇论文提出了一个名为DocDancer的开源智能体,它通过创新的工具驱动框架和自动生成训练数据的方法,显著提升了从长文档中自主搜索和回答问题的能力。
源自 arXiv: 2601.05163