基于产品和品牌维度的LRFM客户细分分析

Mirdatul Husnah, R. Vinarti
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引用次数: 0

摘要

信息技术(IT)的发展鼓励了公司的交易活动,使他们能够迅速成长并具有竞争力。其中之一是利用顾客行为,它被广泛用于帮助企业做出重要的营销决策,提高竞争力。其中之一是利用顾客行为,这被广泛用于帮助公司做出重要的营销决策。但是,公司认为客户行为仅仅局限于数据记录,交易数据也可以被公司进一步分析,从而获得对客户的了解。为了克服这些问题,可以进行客户细分,以帮助企业调整营销策略和描述产品与客户之间的关系。采用模糊c均值算法,采用LRFM/product和LRFM/product方法进行客户细分。研究结果表明,集群1的顾客对品牌和产品具有良好的忠诚度。其特点是持续时间长、频次低、频率高、产品或品牌的货币价值大。集群2是忠诚度最低的客户集群,或者对产品和品牌还没有忠诚度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Customer Segmentation Analysis Using LRFM Based Product and Brand Dimensions
The development of information technology (IT) has encouraged transaction activities in companies so they can grow rapidly and be competitive. One of them is the utilization of customer behavior, which is widely used in helping companies make important marketing decisions and be competitive. One of them is the utilization of customer behavior, which is widely used in helping companies make important marketing decisions. However, the company considers that customer behavior is only limited to data recording, while transaction data can also be further analyzed by the company to gain knowledge about its customers. To overcome these problems, customer segmentation can be carried out to assist companies in adjusting marketing strategies and describing the relationship between products and customers. Customer segmentation is carried out using the LRFM/product and LRFM/product methods with the fuzzy C-Means algorithm. The results of the study show that customers who are in cluster 1 have good loyalty to the brand and product. This is characterized by a long duration, low recency, high frequency, and a large monetary value for the product or brand. And cluster 2 is a customer cluster with minimal loyalty or that does not yet have loyalty to the product and brand.
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