Measuring co-authorship and networking-adjusted scientific impact
John P.A. Ioannidis

TL;DR
This paper introduces metrics to quantify co-authorship networking and adjusts scientific impact assessments accordingly, addressing issues of authorship inflation and manipulation in citation metrics.
Contribution
It proposes novel metrics I1 and In to measure networking intensity and introduces a power exponent R to categorize scientists' collaboration patterns.
Findings
Empirical data supports the proposed metrics.
Metrics can adjust impact scores for networking effects.
Categorization of scientists based on R.
Abstract
Appraisal of the scientific impact of researchers, teams and institutions with productivity and citation metrics has major repercussions. Funding and promotion of individuals and survival of teams and institutions depend on publications and citations. In this competitive environment, the number of authors per paper is increasing and apparently some co-authors don't satisfy authorship criteria. Listing of individual contributions is still sporadic and also open to manipulation. Metrics are needed to measure the networking intensity for a single scientist or group of scientists accounting for patterns of co-authorship. Here, I define I1 for a single scientist as the number of authors who appear in at least I1 papers of the specific scientist. For a group of scientists or institution, In is defined as the number of authors who appear in at least In papers that bear the affiliation of the…
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