直觉模糊分割的顾客行为分析:土耳其两个主要城市的比较

Onur Doğan, O. Seymen, Abdulkadir Hiziroglu
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引用次数: 3

摘要

大量的客户数据及其无处不在,以及传统分割工具的无能,已经转移了研究人员寻找强大的分割技术,以产生管理上有意义的信息。由于其值得注意的实际应用,基于软计算的技术,特别是模糊聚类,可以被认为是这些当代方法之一。尽管在分割中已有各种基于模糊的聚类应用,但具有互补特征的直觉模糊集在有限的研究中出现,特别是在比较背景下。因此,本研究通过提供直觉模糊聚类的比较评估,扩展了当前相关文献的主体。与另外两种著名的分割技术进行比较,[公式:见文本]-均值和模糊[公式:见文本]-均值,基于属于土耳其两个主要城市的交易数据。为了细分目的,处理了超过10,000条客户数据记录,并提出了比较方法。结果表明,直觉模糊聚类方法在聚类效率指标上优于其他方法。通过非分割变量保证了该方法得到的分割结构的有效性。比较评估和潜在的管理意义可以被认为是对相应文献的贡献。本研究还比较了所提出模型中使用的不同参数值的影响。
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Customer Behavior Analysis by Intuitionistic Fuzzy Segmentation: Comparison of Two Major Cities in Turkey
The vast quantity of customer data and its ubiquity, as well as the inabilities of conventional segmentation tools, have diverted researchers in search of powerful segmentation techniques for generating managerially meaningful information. Due to its noteworthy practical use, soft computing-based techniques, especially fuzzy clustering, can be considered one of those contemporary approaches. Although there have been various fuzzy-based clustering applications in segmentation, intuitionistic fuzzy sets that have the complimentary feature have appeared in limited studies, especially in a comparative context. Therefore, this study extends the current body of the pertaining literature by providing a comparative assessment of intuitionistic fuzzy clustering. The comparison was carried out with two other well-known segmentation techniques, [Formula: see text]-means and fuzzy [Formula: see text]-means, based on transaction data that belong to Turkey’s two major cities. Over 10,000 records of customers’ data were processed for segmentation purposes, and the comparative approaches were presented. According to the results, the intuitionistic fuzzy clustering approach outperformed the other methods in terms of the clustering efficiency index being utilized. The validity of the segmentation structure obtained by the superior approach was ensured via nonsegmentation variables. The comparative assessment and the potential managerial implications could be considered as a contribution to the corresponding literature. This study also compares the effects of the different parameter values used in the proposed model.
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