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
Link To Document :
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