To Trust or Not to Trust: Authors' Response to AI-based Reviews
C\'esar Leblanc, Lukas Picek

TL;DR
This study investigates authors' perceptions and use of AI-based reviews in peer review, revealing high perceived usefulness and practical application, but lower trust compared to human reviews, with support for controlled future use.
Contribution
It provides empirical evidence on authors' attitudes towards AI-assisted peer review, highlighting perceived benefits, limitations, and preferences for controlled AI integration.
Findings
83.9% found AI reviews useful
80.4% reported AI identified new issues
82.1% used AI feedback in revisions
Abstract
Large language models are increasingly discussed and used as tools that may assist with scholarly peer review, but empirical evidence regarding how authors use and perceive AI-based feedback remains limited. This paper reports findings from two independent pilot studies on authors' use and perceptions of AI-based auxiliary review at two computer science venues. After the review release, authors were invited to complete an anonymous post-review questionnaire about the AI review's usefulness, trustworthiness, agreement with human reviews, practical value for revision, perceived inaccuracies, and consent. The final dataset included 56 analyzable responses from authors of 40 papers; closed-ended items were summarized using descriptive statistics, and open-ended responses were analyzed using inductive thematic analysis. Most respondents (83.9%) considered the AI-based review useful, and…
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