四月算法的执行,以确定I_DOCRAFT商店的最畅销产品

Anton - Anton, Naufal Naufal
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引用次数: 0

摘要

i_docraft上睡衣产品的销售还没有利用数据挖掘算法来分析交易数据以优化销售。为了避免表现不佳的睡衣模型,确定哪些睡衣模型卖得好,有必要使用Apriori算法。Apriori算法可以根据事务数据识别这些模式。本研究使用Apriori算法的数据挖掘进行事务性数据分析。通过使用这种算法,可以识别出最常销售的睡衣产品,允许对这些模型进行优先排序,并根据它们的优势和通常较高的销售数据的比较,为其他类型的睡衣制定营销策略。处理后的数据产生并发销售的睡衣商品的关联规则。根据最终关联规则的结果,同时满足预定的最小支持度和置信度标准,例如,如果购买商品代码为7的产品(Cherrypie Nightdress),则可能购买商品代码为17的产品(3 in 1 Lotso Set),其支持值为22.58%,置信度为100%。
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IMPLEMENTASI ALGORITMA APRIORI UNTUK MENENTUKAN PRODUK TERLARIS PADA TOKO I_DOCRAFT
The sales of pajama products on i_docraft have not yet leveraged data mining algorithms to analyze transactional data for optimizing sales. To avoid underperforming pajama models and determine which pajama models sell well, the utilization of the Apriori algorithm is necessary. The Apriori algorithm can discern these patterns based on transactional data. This study conducts a transactional data analysis using data mining with the Apriori algorithm. By employing this algorithm, the most frequently sold pajama products can be identified, allowing for prioritization of these models and the development of marketing strategies for other types of pajamas based on a comparison of their strengths and commonly high sales figures. The processed data yields associations rules for concurrently sold pajama items. Based on the results of the final association rules meeting both predetermined minimum support and confidence criteria, for instance, if a product with item code 7 (Cherrypie Nightdress) is purchased, then a product with item code 17 (3 in 1 Lotso Set) will likely be bought with a support value of 22.58% and a confidence value of 100%.
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