通过关联规则挖掘为办公用品零售商制定产品捆绑策略:Apriori 算法和 ECLAT 算法的比较研究

Raymond Oetama
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引用次数: 0

摘要

我们的研究旨在为办公用品商店制定有效的捆绑产品促销战略,以促进销售。首要挑战是理解哪些产品组合符合客户偏好并满足他们的需求。我们利用 Apriori 和 ECLAT 算法生成一致的规则,揭示了产品购买之间的稳健关联。值得注意的是,当置信度为 0.8 时,会出现一个强大的正相关规则,而当置信度为 0.9 时,则不会出现任何结果。两种算法得出的规则完全相同,这说明它们都是可靠的。店主根据 1.96 的最低提升比对捆绑产品采用了两种规则。第一种捆绑产品侧重于对开和四开两种尺寸的 70 克天然纸张,充分利用这两种纸张的受欢迎程度,尽管顾客可能更喜欢其中一种尺寸。第二种捆绑产品强调笔记本,它们经常一起购买,但数量比纸制品少,反映了客户的不同需求和行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product Bundling Strategy for Office Supplies Retailer through Association Rules Mining: Comparative Study of Apriori and ECLAT Algorithms
Our study aims to develop an effective bundled product promotion strategy for the office supply store to boost sales. The primary challenge is comprehending which product combinations align with customer preferences and cater to their needs. We leverage the Apriori and ECLAT algorithms for consistent rule generation, revealing robust associations between product purchases. Notably, a strong positive correlation rule emerges at a confidence level of 0.8, while at 0.9, no results are found. The identical rules derived from both algorithms signify their reliability. The shop owner employs two rules for bundled products based on a minimum Lift Ratio of 1.96. The first bundle focuses on 70gsm natural paper in Folio and Quarto sizes, capitalizing on their popularity, even though customers may prefer one size. The second bundle emphasizes notebooks, often bought together but in smaller quantities than paper products, reflecting diverse customer needs and behaviors.
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