Application Of The Association Rule Method Based On Book Borrowing Patterns In Bojonegoro Regional Libraries

Putrye Aufia Indah Lestari, Nita Cahyani
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Abstract

The library is an institution that processes collections of written and printed works, to meet the educational, research, information, and recreation needs of its users. The Bojonegoro Library Service provides reading materials with a collection of around 24,130 book titles and around 24,130 book copies. The number of registered visitors was 1,424 people. From 2021-2022, there are 303 book lending transaction data. Knowing the results of the Association Rule with the Frequent Pattem-Growth algorithm in determining recommendations for book placement based on borrowing patterns in libraries in the Bojonegoro area. The method used is Association Rule Mining, to produce an efficient algorithm, the algorithm used is the Frequent Pattern Growth (FP-Growth) Algorithm. The characteristic of the FP-Growth algorithm is the data structure used in a tree called FP-Tree. By using FP-Tree the FP-Growth algorithm can directly extract frequent itemsets from FP-Tree. The results of the research carried out by applying the FP growth algorithm with a support value limit of 20% and a confidence value of 80% from a dataset of 144 book lending transactions which became frequent itemsets were a combination of itemsets, resulting in a strong rule of 5 association rules which met the requirements. Can help the Bojongoro Library and archives service to improve the quality of service and can provide recommendations for librarians and as a reference for placing classes of books that are more often borrowed together closer together.
基于图书借阅模式的关联规则方法在波戎内哥罗地区图书馆的应用
图书馆是一个处理书面和印刷作品的机构,以满足其用户的教育、研究、信息和娱乐需求。Bojonegoro图书馆服务提供的阅读材料约有24,130种图书和24,130种图书副本。登记参观人数为1424人。从2021年到2022年,共有303笔图书借阅交易数据。了解基于Bojonegoro地区图书馆借阅模式确定图书放置建议的关联规则与频繁模式增长算法的结果。使用的方法是关联规则挖掘,产生一个高效的算法,所使用的算法是频繁模式增长(FP-Growth)算法。FP-Growth算法的特点是在称为FP-Tree的树中使用的数据结构。通过使用FP-Tree, FP-Growth算法可以直接从FP-Tree中提取频繁项集。采用支持值上限为20%、置信度为80%的FP增长算法对144个图书借阅交易数据集进行研究,结果表明,频繁项目集是多个项目集的组合,得到一个由5个关联规则组成的强规则,符合要求。可以帮助博宗路图书馆和档案服务提高服务质量,可以为图书管理员提供建议,并作为参考,将经常被借阅的书籍放在更近的地方。
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