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Developing kernel intuitionistic fuzzy c-means clustering for e-learning customer analysis

机译:开发用于电子学习客户分析的内核直觉模糊c均值聚类

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This study develops the kernel intuitionistic fuzzy c-means clustering (KIFCM), and applies KIFCM in E-learning customer analysis. KIFCM combines intuitionistic fuzzy sets (IFSs) with kernel fuzzy c-means clustering (KFCM). The KIFCM has advantages of IFSs and KFCM which can effectively handle uncertain data and simultaneously map data to kernel space. The proposed KFCM has better performance than k-mean (KM) and fuzzy c-means (FCM) in numerical example. Furthermore, the study adopts the advanced clustering technology in E-learning customer clustering analysis, and analyses customer data based on clustering results by correlation analysis. The customer analysis result can provide for sales department, and assist to obtain customer's learning tendency in E-learning platform.
机译:本研究开发了内核直觉模糊c均值聚类(KIFCM),并将KIFCM应用于电子学习客户分析。 KIFCM将直觉模糊集(IFS)与内核模糊c均值聚类(KFCM)结合在一起。 KIFCM具有IFS和KFCM的优势,它们可以有效地处理不确定的数据,并同时将数据映射到内核空间。在数值示例中,提出的KFCM具有比k均值(KM)和模糊c均值(FCM)更好的性能。此外,该研究在电子学习客户聚类分析中采用了先进的聚类技术,并通过相关分析基于聚类结果对客户数据进行了分析。客户分析结果可以提供给销售部门,并协助在电子学习平台上获得客户的学习趋势。

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