Soft Bigram distance for names matching
Author(s) -
Mohammed Hadwan,
Mohammed Abdullah Al-Hagery,
Maher Al-Sanabani,
Salah Al-Hagree
Publication year - 2021
Publication title -
peerj computer science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.806
H-Index - 24
ISSN - 2376-5992
DOI - 10.7717/peerj-cs.465
Subject(s) - bigram , measure (data warehouse) , computer science , matching (statistics) , edit distance , distance measures , scale (ratio) , identification (biology) , range (aeronautics) , artificial intelligence , n gram , pattern recognition (psychology) , algorithm , data mining , mathematics , statistics , trigram , physics , botany , materials science , quantum mechanics , biology , language model , composite material
Background Bi-gram distance (BI-DIST) is a recent approach to measure the distance between two strings that have an important role in a wide range of applications in various areas. The importance of BI-DIST is due to its representational and computational efficiency, which has led to extensive research to further enhance its efficiency. However, developing an algorithm that can measure the distance of strings accurately and efficiently has posed a major challenge to many developers. Consequently, this research aims to design an algorithm that can match the names accurately. BI-DIST distance is considered the best orthographic measure for names identification; nevertheless, it lacks a distance scale between the name bigrams. Methods In this research, the Soft Bigram Distance (Soft-Bidist) measure is proposed. It is an extension of BI-DIST by softening the scale of comparison among the name Bigrams for improving the name matching. Different datasets are used to demonstrate the efficiency of the proposed method. Results The results show that Soft-Bidist outperforms the compared algorithms using different name matching datasets.
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