Optimizing Inventory with Frequent Pattern Growth Algorithm for Small and Medium Enterprises

Imam Riadi, Herman Herman, Fitriah Fitriah, S. Suprihatin
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Abstract

The success of a business heavily relies on its ability to compete and adapt to the ever-changing market dynamics, especially in the fiercely competitive retail sector. Amidst intensifying competition, retail business owners must strategically manage product placement and inventory to enhance customer service and meet consumer demand, considering the challenges of finding items. Poor inventory management often results in stock shortages or excess. To address this, adopting suitable inventory management techniques is crucial, including techniques from data mining, such as association rule mining. This research employed the FP-Growth algorithm to identify patterns in product placement and purchases, utilizing a dataset from clothing store sales. Analyzing 140 transactions revealed 24 association rules, comprising rules with 2-itemsets and frequently appearing 3-itemset rules. The highest support value in the final association rules with 2-itemsets was 10% with a confidence level of 56%, and the highest support value in the 3-itemsets was 67% with the same confidence level. Additionally, three rules had a confidence level of 100%. Thus, the association rules generated by the FP-Growth frequent itemset algorithm can serve as valuable decision support for sales of goods in small and medium-sized retail businesses.
利用频繁模式增长算法优化中小企业库存
企业的成功在很大程度上取决于其竞争和适应不断变化的市场动态的能力,尤其是在竞争激烈的零售业。在日益激烈的竞争中,零售企业主必须对产品摆放和库存进行战略性管理,以提升客户服务和满足消费者需求,同时考虑到寻找商品的挑战。库存管理不善往往会导致库存短缺或过剩。要解决这个问题,采用合适的库存管理技术至关重要,其中包括数据挖掘技术,如关联规则挖掘。这项研究采用 FP-Growth 算法,利用服装店销售数据集来识别产品摆放和购买模式。通过分析 140 笔交易,发现了 24 条关联规则,其中包括 2 项集规则和经常出现的 3 项集规则。在最终的 2 项组关联规则中,最高支持值为 10%,置信度为 56%;在 3 项组规则中,最高支持值为 67%,置信度相同。此外,有三条规则的置信度为 100%。因此,FP-Growth 频项集算法生成的关联规则可以为中小型零售企业的商品销售提供有价值的决策支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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