Do LLMs Favor LLMs? Quantifying Interaction Effects in Peer Review
- URL: http://arxiv.org/abs/2601.20920v1
- Date: Wed, 28 Jan 2026 18:50:54 GMT
- Title: Do LLMs Favor LLMs? Quantifying Interaction Effects in Peer Review
- Authors: Vibhhu Sharma, Thorsten Joachims, Sarah Dean,
- Abstract summary: We provide the first comprehensive analysis of LLM use across the peer review pipeline.<n>We analyze over 125,000 paper-review pairs from ICLR, NeurIPS, and ICML.
- Score: 23.244156664404205
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: There are increasing indications that LLMs are not only used for producing scientific papers, but also as part of the peer review process. In this work, we provide the first comprehensive analysis of LLM use across the peer review pipeline, with particular attention to interaction effects: not just whether LLM-assisted papers or LLM-assisted reviews are different in isolation, but whether LLM-assisted reviews evaluate LLM-assisted papers differently. In particular, we analyze over 125,000 paper-review pairs from ICLR, NeurIPS, and ICML. We initially observe what appears to be a systematic interaction effect: LLM-assisted reviews seem especially kind to LLM-assisted papers compared to papers with minimal LLM use. However, controlling for paper quality reveals a different story: LLM-assisted reviews are simply more lenient toward lower quality papers in general, and the over-representation of LLM-assisted papers among weaker submissions creates a spurious interaction effect rather than genuine preferential treatment of LLM-generated content. By augmenting our observational findings with reviews that are fully LLM-generated, we find that fully LLM-generated reviews exhibit severe rating compression that fails to discriminate paper quality, while human reviewers using LLMs substantially reduce this leniency. Finally, examining metareviews, we find that LLM-assisted metareviews are more likely to render accept decisions than human metareviews given equivalent reviewer scores, though fully LLM-generated metareviews tend to be harsher. This suggests that meta-reviewers do not merely outsource the decision-making to the LLM. These findings provide important input for developing policies that govern the use of LLMs during peer review, and they more generally indicate how LLMs interact with existing decision-making processes.
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