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arXiv 提交日期: 2026-01-26
📄 Abstract - DRPG (Decompose, Retrieve, Plan, Generate): An Agentic Framework for Academic Rebuttal

Despite the growing adoption of large language models (LLMs) in scientific research workflows, automated support for academic rebuttal, a crucial step in academic communication and peer review, remains largely underexplored. Existing approaches typically rely on off-the-shelf LLMs or simple pipelines, which struggle with long-context understanding and often fail to produce targeted and persuasive responses. In this paper, we propose DRPG, an agentic framework for automatic academic rebuttal generation that operates through four steps: Decompose reviews into atomic concerns, Retrieve relevant evidence from the paper, Plan rebuttal strategies, and Generate responses accordingly. Notably, the Planner in DRPG reaches over 98% accuracy in identifying the most feasible rebuttal direction. Experiments on data from top-tier conferences demonstrate that DRPG significantly outperforms existing rebuttal pipelines and achieves performance beyond the average human level using only an 8B model. Our analysis further demonstrates the effectiveness of the planner design and its value in providing multi-perspective and explainable suggestions. We also showed that DRPG works well in a more complex multi-round setting. These results highlight the effectiveness of DRPG and its potential to provide high-quality rebuttal content and support the scaling of academic discussions. Codes for this work are available at this https URL.

顶级标签: llm agents natural language processing
详细标签: academic rebuttal agentic framework retrieval-augmented generation planning scientific communication 或 搜索:

DRPG(分解、检索、规划、生成):一个用于学术反驳的智能体框架 / DRPG (Decompose, Retrieve, Plan, Generate): An Agentic Framework for Academic Rebuttal


1️⃣ 一句话总结

这篇论文提出了一个名为DRPG的四步智能体框架,它通过分解审稿意见、检索论文证据、规划反驳策略并生成回答,能够自动生成高质量且有针对性的学术论文反驳意见,其性能甚至超过了平均水平的人类作者。

源自 arXiv: 2601.18081