Quantifying the impact of weak, strong, and super ties in scientific careers
Alexander Michael Petersen

TL;DR
This study analyzes scientific collaboration networks to identify weak, strong, and super ties, revealing that super ties significantly boost productivity and citation impact, highlighting their importance in scientific careers.
Contribution
The paper introduces a novel method to identify super ties in collaboration networks and demonstrates their positive influence on scientific productivity and impact.
Findings
Super ties are characterized by >50% publication overlap.
Super ties increase citation impact by 17%.
Collaboration networks are dominated by weak ties with high turnover.
Abstract
Scientists are frequently faced with the important decision to start or terminate a creative partnership. This process can be influenced by strategic motivations, as early career researchers are pursuers, whereas senior researchers are typically attractors, of new collaborative opportunities. Focusing on the longitudinal aspects of scientific collaboration, we analyzed 473 collaboration profiles using an ego-centric perspective which accounts for researcher-specific characteristics and provides insight into a range of topics, from career achievement and sustainability to team dynamics and efficiency. From more than 166,000 collaboration records, we quantify the frequency distributions of collaboration duration and tie-strength, showing that collaboration networks are dominated by weak ties characterized by high turnover rates. We use analytic extreme-value thresholds to identify a new…
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Taxonomy
Topicsscientometrics and bibliometrics research · Meta-analysis and systematic reviews
