APRES:一种基于智能体的论文修订与评估系统 / APRES: An Agentic Paper Revision and Evaluation System
1️⃣ 一句话总结
这篇论文提出了一种名为APRES的智能系统,它利用大语言模型自动评估并改进科学论文的写作质量,使其更容易被理解和引用,从而在不改变核心科学内容的前提下提升论文的影响力。
Scientific discoveries must be communicated clearly to realize their full potential. Without effective communication, even the most groundbreaking findings risk being overlooked or misunderstood. The primary way scientists communicate their work and receive feedback from the community is through peer review. However, the current system often provides inconsistent feedback between reviewers, ultimately hindering the improvement of a manuscript and limiting its potential impact. In this paper, we introduce a novel method APRES powered by Large Language Models (LLMs) to update a scientific papers text based on an evaluation rubric. Our automated method discovers a rubric that is highly predictive of future citation counts, and integrate it with APRES in an automated system that revises papers to enhance their quality and impact. Crucially, this objective should be met without altering the core scientific content. We demonstrate the success of APRES, which improves future citation prediction by 19.6% in mean averaged error over the next best baseline, and show that our paper revision process yields papers that are preferred over the originals by human expert evaluators 79% of the time. Our findings provide strong empirical support for using LLMs as a tool to help authors stress-test their manuscripts before submission. Ultimately, our work seeks to augment, not replace, the essential role of human expert reviewers, for it should be humans who discern which discoveries truly matter, guiding science toward advancing knowledge and enriching lives.
APRES:一种基于智能体的论文修订与评估系统 / APRES: An Agentic Paper Revision and Evaluation System
这篇论文提出了一种名为APRES的智能系统,它利用大语言模型自动评估并改进科学论文的写作质量,使其更容易被理解和引用,从而在不改变核心科学内容的前提下提升论文的影响力。
源自 arXiv: 2603.03142