基于Rshiny交易数据的关联分类与基于分类的关联(CBA)算法

Alesia Arum Frederika, I Putu Agung Bayupati, Wira Buana
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引用次数: 0

摘要

数据挖掘可用于具有大量数据的业务。其中一种数据挖掘技术是关联分类。将关联技术和分类技术相结合,建立分类模型是一种新的数据处理策略。本研究使用关联分类技术对冷冻食品店的销售交易数据进行分类,冷冻食品店的经营活动中有销售交易数据。它将用于销售策略中,以查找类客户(即会员和普通客户)经常购买的物品。本研究旨在利用CBA (Classification based association)算法对销售交易数据进行基于关联规则的分类。该应用程序使用了企业所有者可以使用的R编程语言。试验获得的规则结果具有支持值、置信度值、覆盖率值和提升比值,这是规则的最佳值水平。在所有已输入的数据中,升降机比值最高的规则的结果可以作为参考,在了解消费者需求的销售策略中实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Associative Classification with Classification Based Association (CBA) Algorithm on Transaction Data with Rshiny
Data mining can be used for businesses with large amounts of data. One of the data mining techniques is Associative Classification. It is a new strategy in data processing that combines association and classification techniques to build a classification model. This research used an associative classification technique on sales transaction data of Frozen Food Stores, which had sales transaction data on their business activities. It would be used in sales strategies to find items often purchased by class customers, namely, members and general. This research aimed to classify based on association rules using the CBA (Classification based Association) algorithm on sales transaction data. The application used the R programming language that business owners could use. The results of the rules obtained from the trial had the value of support, confidence, coverage, and lift ratio, which were the best value levels of a rule. The results of the rules that had the highest lift ratio value from all the data that have been inputted can be used as a reference to be implemented in sales strategies in knowing consumer needs.
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