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首页> 外文期刊>International Journal of Computer Science & Information Technology (IJCSIT) >New Market Segmentation Methods Using Enhanced (RFM), CLV, Modified Regression and Clustering Methods
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New Market Segmentation Methods Using Enhanced (RFM), CLV, Modified Regression and Clustering Methods

机译:使用增强型(RFM),CLV,修改回归和聚类方法的新的市场分割方法

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摘要

Behavioral segmentation is considered as one of the most important concepts of modern marketing. Traditional customer segmentation models require months of analytical work, resulting in discrete consumersa?? insights that are outdated to match the dynamic body of the consumers they are meant to represent. Personalization and consumer experience are make or break factors for the retail industry. This study looks towards maximizing Consumer Lifetime Value (LTV) to accommodates the dynamics in consumer shopping behavior for a medium size retailer. using (LTV) matricto investigate behavioral changes in the consumer shopping history gaining knowledge from behavioral and demographic variables stored in POS database converted into RFM dataset format. In addition, this study applies soft clustering Fuzzy C-Means (FCM) and hard clustering Expectation Maximization (EM) algorithms to classify individual consumers exhibit similar purchase history into specific groups. For measuring the algorithms accuracy, weuse cluster quality assessment (CQA). The CQA shows EM algorithm scales much better than Fuzzyy C-Means algorithm with its ability to assign good initial points in the smaller dataset.
机译:行为细分被认为是现代营销最重要的概念之一。传统客户分割模型需要几个月的分析工作,导致离散消费者?过时的洞察力与他们的动态身体相匹配,他们意味着代表。个性化和消费者经验是零售业的或破坏因素。本研究旨在最大化消费者终身值(LTV),以适应中等零售商的消费者购物行为中的动态。使用(LTV)Matricto调查消费者购物历史中,从存储到RFM数据集格式的POS数据库中存储的行为和人口可归的知识中获得知识的行为变化。此外,本研究适用于软群模糊C-means(FCM)和硬群体期望最大化(EM)算法,以对特定群体进行类似的购买历史。用于测量算法精度,WEUSE群集质量评估(CQA)。 CQA显示EM算法比模糊C-Means算法更好地缩放,其能够在较小的数据集中分配良好的初始点。

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