Peerispect: Claim Verification in Scientific Peer Reviews
Ali Ghorbanpour, Soroush Sadeghian, Alireza Daghighfarsoodeh, Sajad Ebrahimi, Negar Arabzadeh + 2 more
TLDR
Peerispect is an interactive system that automates claim verification in scientific peer reviews using NLP to extract, retrieve, and verify claims.
Key contributions
- Extracts check-worthy claims from peer reviews.
- Retrieves relevant evidence from the manuscript.
- Verifies claims using natural language inference.
- Presents results through a visual interface, highlighting evidence.
Why it matters
Manually verifying claims in peer reviews is infeasible at scale, leading to subjectivity. Peerispect addresses this by providing an automated, interactive system to ensure fairness and accountability in scientific publishing. This improves review quality for reviewers, authors, and program committees.
Original Abstract
Peer review is central to scientific publishing, yet reviewers frequently include claims that are subjective, rhetorical, or misaligned with the submitted work. Assessing whether review statements are factual and verifiable is crucial for fairness and accountability. At the scale of modern conferences and journals, manually inspecting the grounding of such claims is infeasible. We present Peerispect, an interactive system that operationalizes claim-level verification in peer reviews by extracting check-worthy claims from peer reviews, retrieving relevant evidence from the manuscript, and verifying the claims through natural language inference. Results are presented through a visual interface that highlights evidence directly in the paper, enabling rapid inspection and interpretation. Peerispect is designed as a modular Information Retrieval (IR) pipeline, supporting alternative retrievers, rerankers, and verifiers, and is intended for use by reviewers, authors, and program committees. We demonstrate Peerispect through a live, publicly available demo (https://app.reviewer.ly/app/peerispect) and API services (https://github.com/Reviewerly-Inc/Peerispect), accompanied by a video tutorial (https://www.youtube.com/watch?v=pc9RkvkUh14).
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