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Modified dynamic fuzzy c-means clustering algorithm - Application in dynamic customer segmentation

机译:修改动态模糊C型簇聚类算法 - 在动态客户分割中的应用

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The dynamic customer segmentation (DCS) is a useful tool for managers in implementing marketing strategies by observing dynamic changes that are happening in the customer segments over time. The Crespo's dynamic fuzzy c-means (CDFCM) is one of the clustering algorithms introduced in the literature for DCS. We have suggested modifications to the CDFCM algorithm owing to certain shortcomings found in it, resulting in the modified dynamic fuzzy c-means (MDFCM) algorithm. To show the performance of the MDFCM algorithm, extensive experiments were carried out in comparison with the CDFCM algorithm using a retail supermarket dataset with eleven new data updates. To validate the results of the MDFCM algorithm, the fuzzy clustering evaluation measures such as Xie-Beni (XB) index, within sum of squared error (WSSE), root mean squared error (RMSE), Kwon index, and Tang index are utilized. The experimental results show that MDFCM is the most effective clustering algorithm for DCS, and the results are tested statistically to show its significance. The MDFCM algorithm is further compared with another successful algorithm available in the literature called Fathabadi's dynamic fuzzy c-means (FDFCM). To show the usefulness of the MDFCM algorithm, a DCS framework is proposed and it has been demonstrated through a case study.
机译:动态客户分割(DCS)是管理人员通过观察客户段随时间发生的动态变化来实现营销策略的有用工具。克雷斯科的动态模糊C-means(CDFCM)是DCS文献中引入的聚类算法之一。我们建议修改CDFCM算法,由于它发现了某些缺点,导致修改的动态模糊C型方式(MDFC​​M)算法。为了显示MDFCM算法的性能,与使用具有11个新数据更新的零售超市数据集进行了广泛的实验。为了验证MDFCM算法的结果,利用了平方误差(WSSE),XB均匀误差(RMSE),kwon索引和唐索引之类的Xie-Beni(XB)索引等模糊聚类评估措施。实验结果表明,MDFCM是DCS最有效的聚类算法,结果在统计上进行统计测试以显示其意义。进一步与文献中可用的另一种成功的算法相比,MDFCM算法进一步被称为Fathabadi的动态模糊C-Meancy(FDFCM)。为了显示MDFCM算法的有用性,提出了DCS框架,并通过案例研究证明了它。

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