Effects of Vertex Merging & Splitting on Large Coauthorship Networks: A Counterfactual Analysis
This research highlights the critical need for careful author name disambiguation to ensure the reliability and validity of findings in coauthorship network analysis for researchers studying academic collaboration.
This study investigates how vertex merging and splitting errors, induced by author name ambiguity, impact nine coauthorship network measures. It found that initial-based disambiguation methods underestimate specific network properties, making networks appear smaller and more closely connected, while other metrics increase, making authors seem more collaborative.
Researchers analyze coauthorship networks, but author name ambiguity in their network data remains a significant challenge as it can change the number of vertices, distorting network properties. Although many scholars use straightforward heuristics for author name disambiguation using author's forename initials, these techniques can skew our understanding of network properties by merging or splitting vertices, raising concerns about the reliability and validity of these methods. This study investigates how different levels of vertex merging and splitting errors that are induced by name ambiguity impact network measures, using three large coauthorship networks with highly accurate algorithmic author name disambiguation. As a counterfactual scenario, two initial-based disambiguation methods widely used in coauthorship network research were applied to these datasets. Nine coauthorship network metrics were computed while varying randomly the numbers of merged or split vertices. Results show that initial-based disambiguation generates coauthorship networks with specific network properties underestimated, leading to the discovery of coauthorship networks that are smaller and more closely connected than they genuinely are. In contrast, other network metric values increase, making authors appear more collaborative and embedded within less fragmented research communities than they are. The study emphasizes the importance of careful disambiguation of vertex names in analyzing coauthorship networks for rigorous and valid findings.