Improving customer loyalty evaluation methods in the grocery retail industry: a data mining approach

Samira Khodabandehlou, A. Niknafs
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引用次数: 1

Abstract

Evaluating customer loyalty is an issue, which has gained a lot of attention in recent years due to modern facilities and tools for gathering and analysing data. These evaluations have had great and significant effects on improving business processes. Accordingly, data mining methods present significant capabilities. On the other hand, common methods for evaluating customer loyalty have been developed only based on three components, including recency (R), frequency (F) and monetary (M). In this study, it has been tried to add some other effective factors including number of bought products, number of returned products, amount of discount and delivery delay to the analysis in order to measure the impact of each one of them on the quality of the evaluation. The ideas and opinions of experts and the current available literature on the subject have been used as criteria for assessing quality. While implementing the methods, machine-learning tools such as artificial neural networks and support vector machine have been utilised. The results show that the method where the four factors are simultaneously fed into the RFM presents the highest possible accuracy in evaluating customer loyalty and among the learning models, the MLP-boosting method provides the highest accuracy.
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改进杂货零售业顾客忠诚度评估方法:一种数据挖掘方法
评估客户忠诚度是一个问题,近年来由于收集和分析数据的现代设施和工具,这个问题得到了很多关注。这些评估对改进业务流程产生了巨大而重要的影响。因此,数据挖掘方法具有重要的功能。另一方面,评估客户忠诚度的常用方法仅基于三个组成部分,包括最近(R),频率(F)和货币(M)。在本研究中,它已经尝试添加一些其他有效因素,包括购买产品的数量,退货产品的数量,折扣金额和交货延迟的分析,以衡量每一个对评价质量的影响。专家的想法和意见以及目前关于该主题的现有文献已被用作评估质量的标准。在实现这些方法时,使用了人工神经网络和支持向量机等机器学习工具。结果表明,将四个因素同时输入到RFM的方法在评估客户忠诚度方面具有最高的准确性,而在学习模型中,MLP-boosting方法具有最高的准确性。
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来源期刊
International Journal of Electronic Customer Relationship Management
International Journal of Electronic Customer Relationship Management Business, Management and Accounting-Business, Management and Accounting (all)
CiteScore
1.30
自引率
0.00%
发文量
3
期刊介绍: The aim of IJECRM is to provide an international forum and refereed reference in the field of electronic customer relationship management (ECRM). It also addresses the interaction, collaboration, partnership and cooperation between small and medium sized enterprises (SMEs) and larger enterprises in a customer relationship. More innovative analysis and better understanding of the complexity involved in a customer relationship are essential in today''s global businesses. Therefore, manuscripts offering theoretical, conceptual, and practical contributions for ECRM are encouraged. Topics covered include: -Electronic customer relationship management (ECRM) -CRM strategy, marketing, technology and software -Custom marketing and sales management -Customer lifetime value, loyalty, satisfaction, behaviour, databases -Issues for implementing CRM systems/solutions for CRM problems -Tools for capturing customer information, managing/sharing customer data -Partner relationship management, strategic alliances/ partnerships -Business to business market (B2B), business to consumer market (B2C) -Enterprise resource planning (ERP) -Supply chain dynamics and uncertainty, supplier relationship management (SRM) -E-commerce customer relationships on the internet -Supply chain management, channel management, demand chain management -Manufacturing, logistics and information technology/systems -Supplier and distribution networks, international issues -Performance measurement/indicators, research, modelling
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