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  • P-ISSN1013-0799
  • E-ISSN2586-2073
  • KCI

A Study on the Method of Scholarly Paper Recommendation Using Multidimensional Metadata Space

Journal of the Korean Society for Information Management / Journal of the Korean Society for Information Management, (P)1013-0799; (E)2586-2073
2023, v.40 no.1, pp.121-148
https://doi.org/10.3743/KOSIM.2023.40.1.121
Miah Kam (Yonsei University)
Jee Yeon Lee (Yonsei University)

Abstract

The purpose of this study is to propose a scholarly paper recommendation system based on metadata attribute similarity with excellent performance. This study suggests a scholarly paper recommendation method that combines techniques from two sub-fields of Library and Information Science, namely metadata use in Information Organization and co-citation analysis, author bibliographic coupling, co-occurrence frequency, and cosine similarity in Bibliometrics. To conduct experiments, a total of 9,643 paper metadata related to “inequality” and “divide” were collected and refined to derive relative coordinate values between author, keyword, and title attributes using cosine similarity. The study then conducted experiments to select weight conditions and dimension numbers that resulted in a good performance. The results were presented and evaluated by users, and based on this, the study conducted discussions centered on the research questions through reference node and recommendation combination characteristic analysis, conjoint analysis, and results from comparative analysis. Overall, the study showed that the performance was excellent when author-related attributes were used alone or in combination with title-related attributes. If the technique proposed in this study is utilized and a wide range of samples are secured, it could help improve the performance of recommendation techniques not only in the field of literature recommendation in information services but also in various other fields in society.

keywords
recommendation methods, scholarly paper, metadata, multidimensional metadata space, cosine similarity, euclidean distance
Submission Date
2023-02-15
Revised Date
2023-03-07
Accepted Date
2023-03-13

Journal of the Korean Society for Information Management