Analysis of Library Book Borrower Patterns Using Apriori Association Data Mining Techniques

Zamzami, Lucky and Prastowo, Ari Agung and Rulinawaty, and Rahim, Robbi (2021) Analysis of Library Book Borrower Patterns Using Apriori Association Data Mining Techniques. Library Philosophy and Practice, 1 (1). pp. 1-9.

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Official URL: https://digitalcommons.unl.edu/libphilprac/6632/

Abstract

The library is one of the most important facilities because it manages collections of written works, printed works, and recorded works and can provide information resources as well as be a driving force for the advancement of an educational institution. Conventional libraries will have piles of book borrowing transaction data recorded in the agenda book, which is only an archive, and the placement of books far apart, which causes members to take longer to find books when borrowing books of different types, is an issue that must be addressed. To overcome these two issues, a recommendation for an intelligent system is required. This study was carried out in one of Indonesia's vocational schools, with data collected through observation and interviews with librarians. The goal of this study is to examine the borrowing pattern of books using association data mining techniques. The association method used is a priori, and it will result in recommendations for association rules. The result of the association rule with reference to the 2-itemset with the highest value is a combination of Religion book and Physical Education book with 8 percent support and 100 percent confidence, whereas the association rule with 3-itemset reference resulted in 4 rules with 6 percent support and 100 percent confidence. The result is an application that can generate association rules for book recommendations and book placement recommendations.

Item Type: Article
Additional Information (ID): fulltext.pdf
Uncontrolled Keywords: Data mining, apriori method, library, book borrowing, rule association, book placement.
Subjects: 000 Generalities > 020-029 Library and Information Science (Perpustakaan dan Ilmu Informasi) > 020.7 Education and Related Topics (Pendidikan, Penelitian dan Topik Terkait tentang Perpustakaan)
000 Generalities > 020-029 Library and Information Science (Perpustakaan dan Ilmu Informasi) > 025.6 Circulation Services (Layanan Sirkulasi Perpustakaan)
Divisions: Koleksi Digital > Artikel
Depositing User: CR Cherrie Rachman
Date Deposited: 03 Jan 2022 02:24
Last Modified: 03 Jan 2022 03:03
URI: http://repository.ut.ac.id/id/eprint/9621

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