联想法在图书馆图书借阅模式分析中的应用

Fachri Amsury
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引用次数: 0

摘要

图书馆每天都会产生大量的图书借阅交易数据,但由于对数据的了解有限,这些数据并没有得到最大限度的利用,因此图书馆员无法为读者提供正确的图书推荐。本研究旨在运用数据库知识发现(KDD)方法分析图书借阅数据。研究阶段包括观察和访谈、数据选择和数据预处理、数据转换。使用 apriori 算法关联规则挖掘方法进行数据处理,以提供图书借阅交易模式概览。这样做的目的是提供符合图书馆会员阅读兴趣的图书推荐,使其成为根据形成的规则结果进行书架上图书布局的参考。使用的图书借阅交易数据是 2023 年 9 月期间的数据,实现过程中使用 rapidminer 应用程序查找关联规则。结果得到多达 77 条规则建议,最高支持值为 10.7%,最高置信度为 100%,最高提升值为 14。所形成的规则是,如果图书馆会员借阅了戴尔-卡内基的书,那么该图书馆会员借阅乔治-奥威尔的书的概率也是 100%。得出的结果可作为图书馆向读者提供图书推荐、维持图书库存和安排这些图书在相邻书架上的摆放位置的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PENERAPAN METODE ASOSIASI PADA ANALISA POLA PEMINJAMAN BUKU PERPUSTAKAAN
The library produces a lot of book loan transaction data every day, but the data has not been maximally utilized due to the limited knowledge of the data, therefore the librarian cannot provide the right book recommendations for readers. The research aims to analyze book loan data by applying the Knowledge Discovery in Database (KDD) method. The research stages are observation and interviews, data selection and data preprocessing, data transformation. Data processing using the apriori algorithm association rule mining approach to provide an overview in seeing the pattern of book loan transactions. This is to provide book recommendations that match the reading interests of library members, so that it can become a reference in the layout of books on the shelf according to the results of the rules formed. The book loan transaction data used is the September period of 2023, the implementation uses the rapidminer application to find association rules. The results obtained as many as 77 rule recommendations with the highest support value of 10.7%, the highest confidence value of 100% and the highest lift value of 14. The rule formed is that if a library member borrows a book by Dale Carneige, the chances that the library member will also borrow a book by George Orwel are 100%. The results obtained can be a reference for the library to provide book recommendations to readers, maintain the availability of book stock and arrange the placement of these books on adjacent shelves.
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