Comment on “Quantifying long-term scientific impact”

Science56.90
Volume: 345, Issue: 6193, Pages: 149 - 149
Published: Jul 11, 2014
Abstract
Wang et al. (Reports, 4 October 2013, p. 127) claimed high prediction power for their model of citation dynamics. We replicate their analysis but find discouraging results: 14.75% papers are estimated with unreasonably large μ (>5) and λ (>10) and correspondingly enormous prediction errors. The prediction power is even worse than simply using short-term citations to approximate long-term...
Paper Details
Title
Comment on “Quantifying long-term scientific impact”
Published Date
Jul 11, 2014
Journal
Volume
345
Issue
6193
Pages
149 - 149
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