Re2: A Consistency-ensured Dataset for Full-stage Peer Review and Multi-turn Rebuttal Discussions
arXiv cs.CL / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces Re^2, a large, consistency-ensured peer review and rebuttal dataset designed to alleviate reviewer shortages and improve review quality.
- Re^2 comprises 19,926 initial submissions, 70,668 review comments, and 53,818 rebuttals sourced from 24 conferences and 21 workshops on OpenReview, emphasizing data diversity and coverage.
- The dataset frames rebuttal and discussion as a multi-turn conversation to support both traditional static reviews and dynamic, LLM-assisted workflows for authors and reviewers.
- The work includes the data and code release, enabling researchers to develop and evaluate LLM-based tools that better assist manuscript refinement and peer-review processes.
Related Articles
How CVE-2026-25253 exposed every OpenClaw user to RCE — and how to fix it in one command
Dev.to
Does Synthetic Data Generation of LLMs Help Clinical Text Mining?
Dev.to
What CVE-2026-25253 Taught Me About Building Safe AI Assistants
Dev.to
Day 52: Building vs Shipping — Why We Had 711 Commits and 0 Users
Dev.to
The Dawn of the Local AI Era: From iPhone 17 Pro to the Future of NVIDIA RTX
Dev.to