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The ICML 2023 Ranking Experiment: Examining Author Self-Assessment in ML/AI Peer Review

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Taylor & Francis Group2025-07-17 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/The_ICML_2023_Ranking_Experiment_Examining_Author_Self-Assessment_in_ML_AI_Peer_Review/29214611/1
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资源简介:
We conducted an experiment during the review process of the 2023 International Conference on Machine Learning (ICML), asking authors with multiple submissions to rank their papers based on perceived quality. In total, we received 1342 rankings, each from a different author, covering 2592 submissions. In this article, we present an empirical analysis of how author-provided rankings could be leveraged to improve peer review processes at machine learning conferences. We focus on the Isotonic Mechanism, which calibrates raw review scores using the author-provided rankings. Our analysis shows that these ranking-calibrated scores outperform the raw review scores in estimating the ground truth “expected review scores” in terms of both squared and absolute error metrics. Furthermore, we propose several cautious, low-risk applications of the Isotonic Mechanism and author-provided rankings in peer review, including supporting senior area chairs in overseeing area chairs’ recommendations, assisting in the selection of paper awards, and guiding the recruitment of emergency reviewers. Supplementary materials for this article are available online, including a standardized description of the materials available for reproducing the work.
提供机构:
Fan, Jianqing; Su, Weijie; Su, Buxin; Zhang, Jiayao; Collina, Natalie; Li, Didong; Cho, Kyunghyun; Roth, Aaron; Yan, Yuling
创建时间:
2025-06-02
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