Penerapan Data Mining Association Rule Menggunakan Algoritma FP-Growth Untuk Persediaan Sparepart Pada Bengkel

G. Guntoro, Charles Parmonangan Hutabarat
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Abstract

Many individuals are interested in starting a workshop. By responding to each customer's desires, the workshop company may continue to develop, and so the data mining technique can address this challenge. The FP-Growth algorithm is one of the methods that may be used to determine the stock availability of automotive spare components such as engine oil, spark plugs, oil filters, ac filters, batteries, tires, and so on. This research is divided into four stages: problem identification, data gathering, data processing, and data testing. Based on the results of the testing, AK (Battery), OM (Engine Oil), and BS (Spark plug) received support values of 33% and 80%, respectively. Furthermore, the BN (Ban) and KR (Kampas Bram) values were found with 33% support and 80% confidence. Furthermore, we obtain AK (Battery) and OM (Engine Oil) with 33% support and 80% confidence, and BN (Tires) and OM (Engine Oil) with 33% support and 80% confidence. OM (Engineering Oil), AK (Battery), and BS (Battery Storage) are the abbreviations for the terms OM (Engineering Oil), AK (Battery), and BS (Battery (Spark plug)).
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许多人都有兴趣开办一个讲习班。通过响应每个客户的需求,车间公司可以继续发展,因此数据挖掘技术可以解决这一挑战。FP-Growth算法是可用于确定汽车备用部件(如机油、火花塞、机油滤清器、交流滤清器、电池、轮胎等)库存可用性的方法之一。本研究分为四个阶段:问题识别、数据收集、数据处理和数据测试。根据测试结果,AK(电池)、OM(发动机油)和BS(火花塞)分别获得33%和80%的支持值。此外,BN (Ban)和KR (Kampas Bram)的支持率为33%,置信度为80%。此外,我们获得了AK(电池)和OM(发动机油)33%的支持和80%的置信度,BN(轮胎)和OM(发动机油)33%的支持和80%的置信度。OM (Engineering Oil)、AK (Battery)、BS (Battery Storage)分别是OM (Engineering Oil)、AK (Battery)、BS (Battery(火花塞)的缩写。
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