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Hauptverfasser: Zhao, Penghai, Tian, Jinyu, Xing, Qinghua, Zhang, Xin, Li, Zheng, Qian, Jianjun, Cheng, Ming-Ming, Li, Xiang
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2509.25179
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author Zhao, Penghai
Tian, Jinyu
Xing, Qinghua
Zhang, Xin
Li, Zheng
Qian, Jianjun
Cheng, Ming-Ming
Li, Xiang
author_facet Zhao, Penghai
Tian, Jinyu
Xing, Qinghua
Zhang, Xin
Li, Zheng
Qian, Jianjun
Cheng, Ming-Ming
Li, Xiang
contents The ability to estimate the quality of scientific papers is central to how both humans and AI systems will advance scientific knowledge in the future. However, existing LLM-based estimation methods suffer from high inference cost, whereas the faster direct score regression approach is limited by scale inconsistencies. We present NAIPv2, a debiased and efficient framework for paper quality estimation. NAIPv2 employs pairwise learning within domain-year groups to reduce inconsistencies in reviewer ratings and introduces the Review Tendency Signal (RTS) as a probabilistic integration of reviewer scores and confidences. To support training and evaluation, we further construct NAIDv2, a large-scale dataset of 24,276 ICLR submissions enriched with metadata and detailed structured content. Trained on pairwise comparisons but enabling efficient pointwise prediction at deployment, NAIPv2 achieves state-of-the-art performance (78.2% AUC, 0.432 Spearman), while maintaining scalable, linear-time efficiency at inference. Notably, on unseen NeurIPS submissions, it further demonstrates strong generalization, with predicted scores increasing consistently across decision categories from Rejected to Oral. These findings establish NAIPv2 as a debiased and scalable framework for automated paper quality estimation, marking a step toward future scientific intelligence systems. Code and dataset are released at sway.cloud.microsoft/Pr42npP80MfPhvj8.
format Preprint
id arxiv_https___arxiv_org_abs_2509_25179
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NAIPv2: Debiased Pairwise Learning for Efficient Paper Quality Estimation
Zhao, Penghai
Tian, Jinyu
Xing, Qinghua
Zhang, Xin
Li, Zheng
Qian, Jianjun
Cheng, Ming-Ming
Li, Xiang
Computation and Language
Artificial Intelligence
The ability to estimate the quality of scientific papers is central to how both humans and AI systems will advance scientific knowledge in the future. However, existing LLM-based estimation methods suffer from high inference cost, whereas the faster direct score regression approach is limited by scale inconsistencies. We present NAIPv2, a debiased and efficient framework for paper quality estimation. NAIPv2 employs pairwise learning within domain-year groups to reduce inconsistencies in reviewer ratings and introduces the Review Tendency Signal (RTS) as a probabilistic integration of reviewer scores and confidences. To support training and evaluation, we further construct NAIDv2, a large-scale dataset of 24,276 ICLR submissions enriched with metadata and detailed structured content. Trained on pairwise comparisons but enabling efficient pointwise prediction at deployment, NAIPv2 achieves state-of-the-art performance (78.2% AUC, 0.432 Spearman), while maintaining scalable, linear-time efficiency at inference. Notably, on unseen NeurIPS submissions, it further demonstrates strong generalization, with predicted scores increasing consistently across decision categories from Rejected to Oral. These findings establish NAIPv2 as a debiased and scalable framework for automated paper quality estimation, marking a step toward future scientific intelligence systems. Code and dataset are released at sway.cloud.microsoft/Pr42npP80MfPhvj8.
title NAIPv2: Debiased Pairwise Learning for Efficient Paper Quality Estimation
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2509.25179