4.4 Review

A review of author name disambiguation techniques for the PubMed bibliographic database

期刊

JOURNAL OF INFORMATION SCIENCE
卷 47, 期 2, 页码 227-254

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/0165551519888605

关键词

Author name disambiguation; classification; clustering; digital library; MEDLINE; PubMed

资金

  1. National Digital Library of India Project - Ministry of Human Resource Development, Government of India at IIT Kharagpur [F.No.16-7/2017-TEL]

向作者/读者索取更多资源

Author names in bibliographic databases often face ambiguity, especially in databases like PubMed, which has led to the development of various author name disambiguation techniques. This article provides a comprehensive review of existing AND approaches in PubMed, categorizing them, describing their characteristics, and conducting comparative analysis. Additionally, it outlines potential directions for future research in this area.
Author names in bibliographic databases often suffer from ambiguity owing to the same author appearing under different names and multiple authors possessing similar names. It creates difficulty in associating a scholarly work with the person who wrote it, thereby introducing inaccuracy in credit attribution, bibliometric analysis, search-by-author in a digital library and expert discovery. A plethora of techniques for disambiguation of author names has been proposed in the literature. In this article, we focus on the research efforts targeted to disambiguate author names specifically in the PubMed bibliographic database. We believe this concentrated review will be useful to the research community because it discusses techniques applied to a very large real database that is actively used worldwide. We make a comprehensive survey of the existing author name disambiguation (AND) approaches that have been applied to the PubMed database: we organise the approaches into a taxonomy; describe the major characteristics of each approach including its performance, strengths, and limitations; and perform a comparative analysis of them. We also identify the datasets from PubMed that are publicly available for researchers to evaluate AND algorithms. Finally, we outline a few directions for future work.

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