The effect of database dirty data on h-index calculation
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  • 作者:Fiorenzo Franceschini (1)
    Domenico Maisano (1)
    Luca Mastrogiacomo (1)
  • 关键词:Citations ; h ; index ; h ; index robustness ; Uncertain data ; Dirty database
  • 刊名:Scientometrics
  • 出版年:2013
  • 出版时间:June 2013
  • 年:2013
  • 卷:95
  • 期:3
  • 页码:1179-1188
  • 全文大小:299KB
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  • 作者单位:Fiorenzo Franceschini (1)
    Domenico Maisano (1)
    Luca Mastrogiacomo (1)

    1. Dipartimento di Ingegneria Gestionale e della Produzione (DIGEP), Politecnico di Torino, Corso Duca degli Abruzzi 24, 10129, Turin, Italy
  • ISSN:1588-2861
文摘
As all databases, the bibliometric ones (e.g. Scopus, Web of Knowledge and Google Scholar) are not exempt from errors, such as missing or wrong records, which may obviously affect publication/citation statistics and—more in general—the resulting bibliometric indicators. This paper tries to answer to the question “What is the effect of database uncertainty on the evaluation of the h-index?- breaking the paradigm of deterministic database analysis and treating responses to database queries as random variables. Precisely an informetric model of the h-index is used to quantify the variability of this indicator with respect to the variability stemming from errors in database records. Some preliminary results are presented and discussed.
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