基于Fpgrowth算法的汽车备件销售交易数据消费者购买模式分析

Tri Ahmad Djabalul Lael, Deskha Akmal Pramudito
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引用次数: 1

摘要

本研究旨在利用数据挖掘方法及FP-Growth演算法,对摩托车零件销售交易资料进行消费者购买模式分析。本研究的目的是获得有用的信息,为企业在规划营销策略和增加销售。本研究使用的数据是摩托车配件商店一年的摩托车配件销售交易数据。然后使用FP-Growth算法对数据进行处理,以找到重要的购买模式。本研究结果显示,FP-Growth演算法可用于辨识实质消费者购买模式。一些购买模式包括经常购买的产品、最活跃的购买时间和购买最多的产品类别的组合。利用数据挖掘和FP-Growth算法可以帮助企业了解重要的消费者购买模式,从而提高营销策略的有效性,增加摩托车零部件的销量。本研究的新颖之处在于利用数据挖掘方法和FP-Growth算法对摩托车配件销售交易数据进行分析,分析消费者的购买模式。这项研究也为公司提供了有价值的信息,通过确定重要的消费者购买模式,如经常一起购买的产品组合和购买最多的产品类别,来规划营销策略和增加销售。
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Use of Data Mining for The Analysis of Consumer Purchase Patterns with The Fpgrowth Algorithm on Motor Spare Part Sales Transactions Data
This study aims to analyze consumer purchasing patterns for motorcycle parts using data mining methods and FP-Growth algorithms on motorcycle parts sales transaction data. This research aims to obtain helpful information for companies in planning marketing strategies and increasing sales. The data used in this study are motorcycle parts sales transaction data from motorcycle parts stores for one year. The data is then processed using the FP-Growth algorithm to find significant purchasing patterns. The results of this study show that the FP-Growth algorithm can be used to identify substantial consumer purchasing patterns. Some purchase patterns found include a combination of often purchased products, the most active purchase time, and the most purchased product category. Using data mining and the FP-Growth algorithm can assist companies in understanding significant consumer purchasing patterns to improve the effectiveness of marketing strategies and increase sales of motorcycle parts. The novelty of this research lies in using data mining methods and FP-Growth algorithms on motorcycle parts sales transaction data to analyze consumer purchasing patterns. This research also provides valuable information for companies in planning marketing strategies and increasing sales by identifying significant consumer purchasing patterns, such as product combinations often purchased together and the most purchased product categories.
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