Robustness of journal rankings by network flows with different amounts of memory

@article{Bohlin2014RobustnessOJ,
  title={Robustness of journal rankings by network flows with different amounts of memory},
  author={Ludvig Bohlin and Alcides Viamontes Esquivel and Andrea Lancichinetti and Martin Rosvall},
  journal={Journal of the Association for Information Science and Technology},
  year={2014},
  volume={67}
}
As the number of scientific journals has multiplied, journal rankings have become increasingly important for scientific decisions. From submissions and subscriptions to grants and hirings, researchers, policy makers, and funding agencies make important decisions influenced by journal rankings such as the ISI journal impact factor. Typically, the rankings are derived from the citation network between a selection of journals and unavoidably depend on this selection. However, little is known about… 

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