From Newborn to Impact: Bias-Aware Citation Prediction
Mingfei Lu, Mengjia Wu, Jiawei Xu, Weikai Li, Feng Liu, Ying Ding, Yizhou Sun, Jie Lu, Yi Zhang

TL;DR
This paper introduces a bias-aware framework for early citation prediction of new research papers, leveraging multi-agent feature extraction and robust graph learning to improve accuracy and stability.
Contribution
It proposes a novel bias-aware citation prediction model combining multi-agent feature extraction with robust graph learning, addressing implicit impact factors and bias issues.
Findings
Achieves 13% error reduction over baselines
Improves ranking metric (NDCG) by 5.5%
Demonstrates effectiveness on real-world datasets
Abstract
As a key to accessing research impact, citation dynamics underpins research evaluation, scholarly recommendation, and the study of knowledge diffusion. Citation prediction is particularly critical for newborn papers, where early assessment must be performed without citation signals and under highly long-tailed distributions. We identify two key research gaps: (i) insufficient modeling of implicit factors of scientific impact, leading to reliance on coarse proxies; and (ii) a lack of bias-aware learning that can deliver stable predictions on lowly cited papers. We address these gaps by proposing a Bias-Aware Citation Prediction Framework, which combines multi-agent feature extraction with robust graph representation learning. First, a multi-agent x graph co-learning module derives fine-grained, interpretable signals, such as reproducibility, collaboration network, and text quality, from…
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Taxonomy
TopicsAdvanced Graph Neural Networks · scientometrics and bibliometrics research · Machine Learning in Healthcare
