Comparison of Apriori and Frequent Pattern Growth Algorithm in Predicting The Sales of Goods

Wira Hadinata, Jurisman Waruwu, Toto Hermanto
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Abstract

The increasing number of bona fide companies, especially in the world of retail minimarkets, PT. Suka Maju innovates to make a company that develops in the retail sector so that it can serve consumers well. With the problems - problems in the company PT. Suka Maju still applies unrelated items so that consumers find it difficult to buy related products. PT. Suka Maju does not apply interrelated items such as coffee and sugar, sauce and noodles, bread and cheese. company PT. Suka Maju must act as quickly as possible and requires data analysis using Market Basket Analysis. The purpose of the existence of data in every transaction of product sales to consumers, data can be processed properly to provide information to companies so that transaction data in every product purchase can be useful and to determine the layout of a product. To deal with this problem, researchers found a pattern that can improve a layout pattern or display of sales items in the retail world, one of which is by utilizing product sales transaction data used to support and find an association rule data mining method technique, comparing the algorithm Apriori and algorithm Frequent Pattern Growth. The purpose of this study is to compare 2 algorithms and choose a better algorithm to help find products that are often purchased together. From the results of the research from 10,005 transactions of 27 attributes using the algorithms Apriori and algorithms Frequent Pattern Growth with the minimum parameters of support = 100, confidence = 100 and lift = 2.58, the algorithm Frequent Pattern Growth has the highest accuracy compared to the algorithm Apriori. In the results of this study, it can be said that the algorithm Frequent Pattern Growth is the best for determining interrelated
Apriori与频繁模式增长算法在商品销售预测中的比较
越来越多的真正的公司,特别是在世界上的零售小市场,PT. Suka Maju创新,使公司在零售领域的发展,使它可以为消费者提供良好的服务。由于问题-公司PT的问题,Suka Maju仍然使用不相关的项目,使消费者难以购买相关产品。Suka Maju不适用于咖啡和糖、酱和面条、面包和奶酪等相互关联的物品。公司PT. Suka Maju必须尽快采取行动,并需要使用市场篮子分析进行数据分析。在每一笔产品销售给消费者的交易中都存在数据的目的,可以对数据进行适当的处理,为企业提供信息,使每一笔产品购买中的交易数据都能发挥作用,并确定产品的布局。为了解决这一问题,研究人员发现了一种可以改善零售领域销售商品的布局模式或显示模式,其中之一是利用产品销售交易数据来支持并找到一种关联规则数据挖掘方法技术,比较了Apriori算法和频繁模式增长算法。本研究的目的是比较两种算法,选择一种更好的算法来帮助发现经常一起购买的产品。从使用Apriori算法和frequency Pattern Growth算法(support = 100, confidence = 100, lift = 2.58)对27个属性的10,005笔交易的研究结果来看,与Apriori算法相比,frequency Pattern Growth算法的准确率最高。在本研究的结果中,可以说频繁模式增长算法是确定关联的最佳方法
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