使用 Apriori 算法实施数据挖掘以查找运动鞋销售的常项集

Topan Setiawan
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摘要

无论大小公司,要想在日益激烈的商业竞争中立于不败之地,都需要正确的销售策略,雅莎系列运动商店也不例外。一种方法是使用关联规则法的先验算法对销售交易数据库进行数据挖掘分析。这种方法可以从商品集合(商品集)中找到经常(经常)出现的商品组合,从而使商店管理层了解市场情况、消费者口味和销售模式。根据研究结果和数据分析(最小支持值为 0.33,最小置信度为 0.80),得出了三条关联规则,其中使用先验算法找到的频繁出现的物品集信息可被商店管理部门用于确定销售策略,如折扣促销、包装和商品库存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementasi Data Mining Menggunakan Algoritma Apriori Untuk Menemukan Frequent Itemset Penjualan Sneakers
Every small or large company that wants to stay afloat in an increasingly fierce business competition requires the right sales strategy, including at the Yasa Collection Sport Store. One way is to perform data mining analysis on the sales transaction database using the a priori algorithm of the association rule method. This method makes it possible to find combinations of items that often (often) appear from a collection of items (itemset), so that store management knows market conditions, consumer tastes and sales patterns. Based on the results of research and data analysis conducted with a minimum support value of 0.33 and a minimum confidence value of 0.80, three association rules were obtained, in which the frequent itemset information that had been found using the a priori algorithm, could be utilized by the store management in determining sales strategies, such as discount promotion, packaging and stocking goods.
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