Title of article
AHP based feature ranking model using string similarity for resolving name ambiguity
Author/Authors
Subathra, M Department of Computer Applications - PSG College of Technology - Coimbatore - Tamilnadu, India , Umarani, V Department of Computer Applications - PSG College of Technology - Coimbatore - Tamilnadu, India
Pages
7
From page
1745
To page
1751
Abstract
In recent years of Natural Language Processing research, the name ambiguity problem remains
unresolved while retrieving the information of author names from bibliographic citations in a digital
library system. In this paper, a feature ranking model is investigated that resolve the ambiguity
problem with Analytical Hierarchy Process (AHP). The AHP procedure prioritizes and assigns the
weights for certain criteria which forms a judgemental matrix called pairwise comparison matrix. The
result of the AHP analysis aims to get the preprocessing level using Levenshtein Distance. Finally,
the AHP helps to find the co-author criteria as the highest priority than the other criteria taken from
the digital library data set.
Keywords
NLP , citations , digital library , levenshtein distance , AHP
Journal title
International Journal of Nonlinear Analysis and Applications
Serial Year
2021
Record number
2703192
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