采用有效聚类技术的大型超市业务综合框架

Rezwana Mahfuza, R. Uddin, Yeaminur Rahman, Md. Abdul Hai
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引用次数: 0

摘要

超级商店是一种大型商店,在一个屋檐下提供各种各样的日常用品,为顾客省去了在不同地点购物的麻烦。市场行业正在迅速扩张,为了利用顾客行为实现利润最大化,超市需要不断监测顾客的购买模式,并采取适当的措施来保持他们的忠诚度,同时推动他们花更多的钱,带来更多的新客户。本研究提出了一个合适的框架,可以根据超市消费者的属性对其进行细分,并应用适当的细分和聚类技术,通过利润分析来评估顾客价值。采用K-means聚类、Agglomerative聚类和模糊C-means聚类这三种聚类算法,对最近、频率、货币价值(RFM)和长度、最近、频率、货币价值(LRFM)模型进行了广泛的比较,以获得最优框架。根据研究结果,使用K-means算法的LRFM模型产生了最有希望的输出。它由7个集群组成,其中集群3是最关键的集群,因为它的客户拥有最多的客户价值,为超市带来最大的利润。因此,超市老板对顾客的需求和愿望有了更好的了解,使他们能够针对相关行业实施有效的营销策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Framework for Superstore Business with Employing Effective Clustering Techniques
A superstore is an extensive store offering a diverse variety of everyday commodities under one roof, saving customers the trouble of shopping at different locations. The market industry is rapidly expanding, and to maximize profit utilizing customer behaviour, superstores need to constantly monitor their client’s purchasing patterns and take appropriate measures to keep their loyalty while pushing them to spend more and bring in more new clients. The research presents a suitable framework for segmenting superstore consumers based on their attributes and assessing customer value through profit analysis applying appropriate segmentation and clustering techniques. An extensive comparison of the recency, frequency, monetary value (RFM) and length, recency, frequency, monetary value (LRFM) models employing three clustering algorithms: K-means Clustering, Agglomerative Clustering, and Fuzzy C-means Clustering is experimented to obtain the optimal framework. According to the findings, the LRFM model with the K-means algorithm produces the most promising output. It consists of 7 clusters where cluster 3 is the most crucial cluster as its customers hold the most customer value and generate the most profit for the superstore. As a result, superstore owners have a better understanding of their customers’ needs and wants, allowing them to implement effective marketing strategies for the relevant sector.
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