基于Apriori算法的关联方法的销售交易数据挖掘

A. Sani, Samuel, Nur Nawaningtyas P, Bayu Waseso, Goldie Gunadi, Tri Haryanto
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引用次数: 1

摘要

本研究的目的是确定消费者在CV上的购买模式。通过利用其中一种数据挖掘方法,即关联方法。该先验算法属于数据挖掘规则类型。换句话说,店主可以管理产品放置和设计营销活动,以确定商品组合之间的关联规则,并从消费者购买分析中确定关联规则的结果。apriori算法的任务是查找所有销售交易中频繁出现的项目集或最频繁出现的项目集,以便在RapidMiner应用程序的帮助下形成关联规则。这样,公司所有的销售交易数据都可以被重新处理以获得关键信息。销售交易数据将使用数据库中的知识发现(KDD)进行处理。使用RapidMiner应用程序的测试结果得到四个关联规则。最好的关联规则是,如果消费者购买代码1076的Pants,他们也可能购买代码0814的Pants(置信度= 83.3% &提升率= 18.5)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining on Sales Transaction Data Using the Association Method with Apriori Algorithm
The purpose of this study was to determine consumer buying patterns at CV. XYZ by utilizing one of the data mining methods, namely the association method. This apriori algorithm belongs to the type of data mining rules. In other words, store owners can manage product placement and design marketing campaigns to determine the association rules between item combinations and determine the results of the association rules from consumer purchase analysis. The apriori algorithm is tasked with finding the frequent itemset or the itemset with the most frequent occurrence of all sales transactions so that association rules can be formed with the help of the RapidMiner application. Thus, all the sales transaction data in the company can be reprocessed to obtain critical information. Sales transaction data will be processed using Knowledge Discovery in Database (KDD). The test results with the RapidMiner application get four association rules. The best association rule is that if consumers buy Pants with code 1076, they are also likely to purchase Pants with code 0814 (confidence = 83.3% & lift = 18.5).
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