Identification of milestone papers through time-balanced network centrality
Manuel Sebastian Mariani, Matus Medo, Yi-Cheng Zhang

TL;DR
This paper introduces a new time-balanced network centrality metric that improves the identification of milestone scientific papers by reducing age bias, outperforming traditional citation count metrics.
Contribution
The study proposes a novel PageRank-based metric that accounts for paper age, enhancing the detection of significant scientific contributions within citation networks.
Findings
Network-based metrics outperform citation count in identifying milestone papers.
The new metric effectively compares papers of different ages on a common scale.
Time bias removal improves the ranking accuracy of influential papers.
Abstract
Citations between scientific papers and related bibliometric indices, such as the -index for authors and the impact factor for journals, are being increasingly used - often in controversial ways - as quantitative tools for research evaluation. Yet, a fundamental research question remains still open: to which extent do quantitative metrics capture the significance of scientific works? We analyze the network of citations among the papers published by the American Physical Society (APS) journals between 1893 and 2009, and focus on the comparison of metrics built on the citation count with network-based metrics. We contrast five article-level metrics with respect to the rankings that they assign to a set of fundamental papers, called Milestone Letters, carefully selected by the APS editors for "making long-lived contributions to physics, either by announcing significant…
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