Title of article :
Efficient supervised and semi-supervised approaches for affiliations disambiguation
Author/Authors :
Pascal Cuxac، نويسنده , , Jean-Charles Lamirel ، نويسنده , , Valerie Bonvallot، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
12
From page :
47
To page :
58
Abstract :
The disambiguation of named entities is a challenge in many fields such as scientometrics, social networks, record linkage, citation analysis, semantic web…etc. The names ambiguities can arise from misspelling, typographical or OCR mistakes, abbreviations, omissions… Therefore, the search of names of persons or of organizations is difficult as soon as a single name might appear in many different forms. This paper proposes two approaches to disambiguate on the affiliations of authors of scientific papers in bibliographic databases: the first way considers that a training dataset is available, and uses a Naive Bayes model. The second way assumes that there is no learning resource, and uses a semi-supervised approach, mixing soft-clustering and Bayesian learning. The results are encouraging and the approach is already partially applied in a scientific survey department. However, our experiments also highlight that our approach has some limitations: it cannot process efficiently highly unbalanced data. Alternatives solutions are possible for future developments, particularly with the use of a recent clustering algorithm relying on feature maximization.
Journal title :
Scientometrics
Serial Year :
2013
Journal title :
Scientometrics
Record number :
1016609
Link To Document :
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