Winda Widya Ariestya, Wahyu Supriyatin, Ida Astuti
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引用次数: 6
摘要
顾客对主要产品的需求各不相同,因此商店有必要确定营销策略。数据挖掘也被称为KDD (Knowledge Discovery in Database),即从数据中挖掘出有价值的知识。研究的目的是确定正确的营销策略来销售商品。营销策略是通过分析消费者对基本需求的需求来采取的。在本研究中使用的算法是FP (frequency Pattern)-Growth和A-priori算法。使用关联规则查找项目集之间的组合模式。FP-Growth算法是一种用于确定数据集中经常出现在项集频率上的一组数据的算法。KDD研究的阶段包括数据清洗、数据集成、数据选择、数据转换、数据挖掘、模式评估和知识表示。测试使用Rapidminer软件,最小置信度为0.6,最小支持度为0.45。FP-Growth算法得到5条规则结论,Apriori算法得到3条规则结论。FP-Growth算法在确定营销策略方面比先验算法做出了更好的决策规则,因为它对商品如何销售产生了更多的决策。
MARKETING STRATEGY FOR THE DETERMINATION OF STAPLE CONSUMER PRODUCTS USING FP-GROWTH AND APRIORI ALGORITHM
The demand for staple products that vary among customers makes it necessary for the store to determine how the marketing strategy should be. Data mining are known as KDD (Knowledge Discovery in Database) is to digging up valuable knowledge from the data. Research purpose is to identify the right marketing strategy to sales the goods. The marketing strategy is took by analyze how much consumers demand for basic needs. The algorithms used in this research are FP (Frequent Pattern)-Growth and A-priori Algorithm. Finding combinations patterns between itemset using the Association Rule. FP-Growth algorithm is an algorithm that been used to determining a set of data in a data set that often appears on the frequency of the itemset. the KDD stages study are data cleansing, data integration, data selection, data transformation, data mining, pattern evaluation and knowledge presentation. the Testing used Rapidminer software with a minimum confidence value of 0.6 and a minimum support of 0.45. FP-Growth algorithm obtained 5 rule conclusions while Apriori Algorithm obtained 3 rule conclusions. The FP-Growth algorithm make a better decision rules than a priori algorithms in determining of marketing strategies, because it produces more decisions on how the goods sold.