A nonlinear collective credit allocation in scientific publications
Fenghua Wang,
Ying Fan (),
An Zeng () and
Zengru Di
Additional contact information
Fenghua Wang: Beijing Normal University
Ying Fan: Beijing Normal University
An Zeng: Beijing Normal University
Zengru Di: Beijing Normal University
Scientometrics, 2019, vol. 119, issue 3, No 16, 1655-1668
Abstract:
Abstract Collaboration among researchers plays an important role in scientific discoveries, especially in multidisciplinary research. How to allocate credit reasonably to coauthors of a paper is a long-standing problem in the science of sciences. The collective credit allocation method (CCA method) proposed by Shen, H. W. and Barabási, A. L. provides a novel view to solve this problem, which measures the coauthors’ contribution to a paper based on the citation process by the scientific community. Nevertheless, the existing collective allocation method assigns equal weights to citing papers, which is sensitive to the malicious manipulation. In this paper, we propose a nonlinear collective credit allocation method (NCCA method) that assigns different strength to citing papers according to papers’ scientific impact when measuring papers’ similarity. Compared to the CCA method, we find that the NCCA method assigns more credits to Nobel laureates in the Nobel-winning papers. Moreover, the NCCA method is robust against random perturbations and the malicious manipulation in both Nobel-prize papers and ordinary papers. Furthermore, the collective credit allocation method can also modify h index.
Keywords: Citation network; Credit allocation; h index (search for similar items in EconPapers)
Date: 2019
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Citations: View citations in EconPapers (2)
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DOI: 10.1007/s11192-019-03107-x
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