AI.news
主页教程研究工具模型AI创业讨论新闻WIKI🚀 创业库★ 投稿
AI+医疗机器人教育金融能源健康娱乐思考

Review Arcade: On the Human Alignment and Gameability of LLM Reviews

arxiv.org
分享到

View PDF HTML (experimental)

Abstract:LLM-generated reviews for scientific papers are gaining considerable traction and are even being officially piloted by major conferences. We have to assume that not only reviewers are using LLM-assistance, but also that authors use LLMs to revise their papers before submitting. In this work, we perform empirical experiments on papers from the 2025 ACL Rolling Review (ARR) to evaluate LLM reviews from both the author and the reviewer perspective. First, we identify a limited alignment of LLM reviews with human ones. In the best-case scenario, the alignment is reasonable. However, we also find that LLM-human alignment varies substantially across prompts and models. Finally, we investigate the scenario in which the author uses an iterative draft-revise workflow to improve the submission according to the LLM review. We find that this "gaming" of LLM reviews can be effective in specific scenarios, leading to a statistically significant increase of overall scores for up to 35\% of papers. We publish our code: this https URL.

Submission history

From: Jan Strich [view email]
[v1] Wed, 27 May 2026 12:40:35 UTC (187 KB)