关联规则方法与Apriori算法在销售模式查找中的应用——以丹戎百货为例

M. H. Santoso
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引用次数: 15

摘要

数据挖掘通常可以定义为在大量数据中寻找模式(提取)或有趣信息的技术,这些信息对决策支持有意义。Apriori算法是一种众所周知的常用关联规则发现数据挖掘方法。关联规则和Apriori算法是两种非常突出的算法,用于从存储在数据库中的事务数据中查找大量频繁出现的项集。进行计算以确定产生关联规则的最小支持值和最小置信度。关联规则用于使用RapidMiner软件在特定时间段内生成项目集的购买活动百分比。使用先验算法方法的测试结果表明,关联规则表明,顾客购买的牙膏和洗涤剂往往满足最小置信度值。通过使用该先验算法搜索模式,希望得到的信息可以进一步改进销售策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Association Rule Method Using Apriori Algorithm to Find Sales Patterns Case Study of Indomaret Tanjung Anom
Data mining can generally be defined as a technique for finding patterns (extraction) or interesting information in large amounts of data that have meaning for decision support. One of the well-known and commonly used association rule discovery data mining methods is the Apriori algorithm. The Association Rule and the Apriori Algorithm are two very prominent algorithms for finding a number of frequently occurring sets of items from transaction data stored in databases. The calculation is done to determine the minimum value of support and minimum confidence that will produce the association rule. The association rule is used to produce the percentage of purchasing activity for an itemset within a certain period of time using the RapidMiner software. The results of the test using the priori algorithm method show that the association rule, that customers often buy toothpaste and detergents that have met the minimum confidence value. By searching for patterns using this a priori algorithm, it is hoped that the resulting information can improve further sales strategies.
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