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A probabilistic similarity metric for Medline records: A model for author name disambiguation

✍ Scribed by Vetle I. Torvik; Marc Weeber; Don R. Swanson; Neil R. Smalheiser


Publisher
John Wiley and Sons
Year
2004
Tongue
English
Weight
573 KB
Volume
56
Category
Article
ISSN
1532-2882

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✦ Synopsis


Abstract

We present a model for estimating the probability that a pair of author names (sharing last name and first initial), appearing on two different Medline articles, refer to the same individual. The model uses a simple yet powerful similarity profile between a pair of articles, based on title, journal name, coauthor names, medical subject headings (MeSH), language, affiliation, and name attributes (prevalence in the literature, middle initial, and suffix). The similarity profile distribution is computed from reference sets consisting of pairs of articles containing almost exclusively author matches versus nonmatches, generated in an unbiased manner. Although the match set is generated automatically and might contain a small proportion of nonmatches, the model is quite robust against contamination with nonmatches. We have created a free, public service (β€œAuthor‐ity”: http://arrowsmith.psych.uic.edu) that takes as input an author's name given on a specific article, and gives as output a list of all articles with that (last name, first initial) ranked by decreasing similarity, with match probability indicated.


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