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Analysis

This paper investigates how the position of authors within collaboration networks influences citation counts in top AI conferences. It moves beyond content-based evaluation by analyzing author centrality metrics and their impact on citation disparities. The study's methodological advancements, including the use of beta regression and a novel centrality metric (HCTCD), are significant. The findings highlight the importance of long-term centrality and team-level network connectivity in predicting citation success, challenging traditional evaluation methods and advocating for network-aware assessment frameworks.
Reference

Long-term centrality exerts a significantly stronger effect on citation percentiles than short-term metrics, with closeness centrality and HCTCD emerging as the most potent predictors.