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http://dx.doi.org/10.3743/KOSIM.2022.39.3.001

A Study on the Development of the School Library Book Recommendation System Using the Association Rule  

Lim, Jeong-Hoon (대전과학고등학교)
Cho, Changje (NeuroEars 연구개발전담부서)
Kim, Jongheon (대전과학고등학교)
Publication Information
Journal of the Korean Society for information Management / v.39, no.3, 2022 , pp. 1-22 More about this Journal
Abstract
The purpose of this study is to propose a book recommendation system that can be used in school libraries. The book recommendation system applies an algorithm based on association rules using DLS lending data and is designed to provide personalized book recommendation services to school library users. For this purpose, association rules based on the Apriori algorithm and betweenness centrality analysis were applied and detailed functions such as descriptive statistics, generation of association rules, student-centered recommendation, and book-centered recommendation were materialized. Subsequently, opinions on the use of the book recommendation system were investigated through in-depth interviews with teacher librarians. As a result of the investigation, opinions on the necessity and difficulty of book recommendation, student responses, differences from existing recommendation methods, utilization methods, and improvements were confirmed and based on this, the following discussions were proposed. First, it is necessary to provide long-term lending data to understand the characteristics of each school. Second, it is necessary to discuss the data integration plan by region or school characteristics. Third, It is necessary to establish a book recommendation system provided by the Comprehensive Support System for Reading Education. Based on the contents proposed in this study, it is expected that various discussions will be made on the application of a personalization recommendation system that can be used in the school library in the future.
Keywords
book recommendation system; association rule; betweenness centrality; school library; personalized;
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Times Cited By KSCI : 8  (Citation Analysis)
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