Manidatta Ray, Mamata Ray, K. Muduli, A. Banaitis, Anil Kumar
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The two multi attribute decision making tools i.e., fuzzy AHP (Analytic Hierarchy Process) and fuzzy TOPSIS (Technique for Order Preference by Similarity to Ideal Solution) are used for ranking these identified clusters. The applicability of the integrated decision making technique is also demonstrated in this paper considering the case of Indian retail sector. This research collected responses from nine experts from Indian retail industry regarding their perception of relative importance of four criteria of customer life value and evaluated weights of each criterion using fuzzy AHP. Transaction data of 18 months of the case retail store was analysed to segment 1,600 customers into eight clusters using fuzzy c-means clustering analysis technique. Finally, these eight clusters were ranked using fuzzy TOPSIS (Technique for Order Preference by Similarity to Ideal Solution). 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引用次数: 1
摘要
本研究的重点是将模糊决策环境下的多属性决策与数据挖掘相结合,用于客户关系管理。基于顾客生命时间价值的四个标准,即长度(L)、频度(R)、频度(F)和货币价值(M),分析了多属性决策与数据挖掘之间的关系。提出的综合方法采用模糊c均值(FCM)聚类分析作为数据挖掘工具。实验采用MATLAB 12.0对8类客户进行识别。利用模糊层次分析法(AHP)和模糊TOPSIS (Order Preference Technique of Similarity to Ideal Solution)两种多属性决策工具对已识别的聚类进行排序。本文还以印度零售业为例,论证了综合决策技术的适用性。本研究收集了来自印度零售业的九位专家对客户生命价值四个标准的相对重要性的看法,并使用模糊层次分析法评估了每个标准的权重。对案例零售商店18个月的交易数据进行分析,采用模糊c均值聚类分析技术将1600名顾客划分为8类。最后,利用模糊TOPSIS (Order Preference Technique for Similarity to Ideal Solution)对这8个聚类进行排序。本研究的结果可以帮助企业识别更有价值的客户,并分配更多的资源来满足他们。研究结果也将有助于为不同集群的客户制定不同的忠诚度计划策略。
INTEGRATED APPROACH OF FUZZY MULTI-ATTRIBUTE DECISION MAKING AND DATA MINING FOR CUSTOMER SEGMENTATION
This research work focuses on integrating the multi attribute decision making with data mining in a fuzzy decision environment for customer relationship management. The main objective is to analyse the relation between multi attribute decision making and data mining considering a complex problem of ordering customers segments, which is based on four criteria of customer’s life time value, viz. length (L), recency (R), frequency (F) and monetary value (M). The proposed integrated approach involves fuzzy C-means (FCM) cluster analysis as data mining tool. The experiment conducted using MATLAB 12.0 for identifying eight clusters of customers. The two multi attribute decision making tools i.e., fuzzy AHP (Analytic Hierarchy Process) and fuzzy TOPSIS (Technique for Order Preference by Similarity to Ideal Solution) are used for ranking these identified clusters. The applicability of the integrated decision making technique is also demonstrated in this paper considering the case of Indian retail sector. This research collected responses from nine experts from Indian retail industry regarding their perception of relative importance of four criteria of customer life value and evaluated weights of each criterion using fuzzy AHP. Transaction data of 18 months of the case retail store was analysed to segment 1,600 customers into eight clusters using fuzzy c-means clustering analysis technique. Finally, these eight clusters were ranked using fuzzy TOPSIS (Technique for Order Preference by Similarity to Ideal Solution). The findings of this research could be helpful for firms in identifying the more valuable customers for them and allocate more resources to satisfy them. The findings will be also helpful in developing different loyalty program strategies for customers of different clusters.