Gen-Review: A Large-scale Dataset of AI-Generated (and Human-written) Peer Reviews
Luca Demetrio, Giovanni Apruzzese, Kathrin Grosse, Pavel Laskov, Emil Lupu, Vera Rimmer, Philine Widmer

TL;DR
This paper introduces GenReview, the largest dataset of AI-generated and human-written peer reviews, enabling research on biases, detection, and alignment of LLMs in scientific peer review processes.
Contribution
It provides a comprehensive dataset of 81K LLM-generated reviews linked to ICLR submissions from 2018-2025, filling a critical gap for studying AI's role in peer review.
Findings
LLMs exhibit bias in reviews
AI-generated reviews can be detected automatically
LLMs' ratings align with acceptance decisions only for accepted papers
Abstract
How does the progressive embracement of Large Language Models (LLMs) affect scientific peer reviewing? This multifaceted question is fundamental to the effectiveness -- as well as to the integrity -- of the scientific process. Recent evidence suggests that LLMs may have already been tacitly used in peer reviewing, e.g., at the 2024 International Conference of Learning Representations (ICLR). Furthermore, some efforts have been undertaken in an attempt to explicitly integrate LLMs in peer reviewing by various editorial boards (including that of ICLR'25). To fully understand the utility and the implications of LLMs' deployment for scientific reviewing, a comprehensive relevant dataset is strongly desirable. Despite some previous research on this topic, such dataset has been lacking so far. We fill in this gap by presenting GenReview, the hitherto largest dataset containing LLM-written…
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Taxonomy
TopicsExpert finding and Q&A systems · Academic integrity and plagiarism · Artificial Intelligence in Healthcare and Education
