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Customer Segmentation by Various Clustering Approaches and Building an Effective Hybrid Learning System on Churn Prediction Dataset

机译:各种聚类方法的客户分割,并在流失预测数据集中构建有效的混合学习系统

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Success of every organization or firm depends on Customer Preservation (CP) and Customer Correlation Management (CCM). These are the two parameters determining the rate at which the customers decide to subscribe with the same organization. Thus higher service quality reduces the chance of customer churn. It involves various attributes to be analyzed and predicted in industries like telecommunication, banking, and financial institutions. Customer churn forecast helps the organization to retain the valuable customers and it avoids failure of the particular organization in a competitive market. Single classifier does not result in higher churn forecast accuracy. Nowadays, both unsupervised and supervised techniques are being combined to get better classification accuracy. Also unsupervised classification plays a major role in hybrid learning techniques. Hence, this work focuses on various unsupervised learning techniques which are comparatively studied using algorithms like Fuzzy C-Means (FCM), Possibilistic Fuzzy C-Means (PFCM), K-Means clustering (K-Means), where similar type of customers is grouped within a cluster and better customer segmentation is predicted. The clusters are divided for training and testing by Holdout method, in which training is carried out by decision tree and testing is done by the model generated. The results of the churn prediction data set experiment show that; K-Means clustering algorithm along with the decision tree helps improving the result of churn prediction problem present in the telecommunication industry.
机译:每个组织或公司的成功取决于客户保护(CP)和客户相关管理(CCM)。这些是确定客户决定订阅相同组织的速率的两个参数。因此,更高的服务质量减少了客户流失的可能性。它涉及在电信,银行业和金融机构等行业中分析和预测的各种属性。客户Churn预测有助于该组织保留有价值的客户,并避免在竞争性市场中避免特定组织的失败。单个分类器不会导致更高的流失预测精度。如今,既是无监督和监督的技术也正在组合以获得更好的分类准确性。还无监督的分类在混合学习技术中起着重要作用。因此,这项工作侧重于各种无监督的学习技术,使用模糊C型方式(FCM)等算法,可能的模糊C型(PFCM),K均值聚类(K-MEALY),其中类似类型的客户是相对的在群集中进行分组,预测更好的客户分割。群集划分用于通过HoldOut方法进行培训和测试,其中通过决策树进行培训,并通过模型生成的测试进行测试。搅拌预测数据集实验结果表明; K-Means Classing算法以及决策树有助于提高电信业中的流失预测问题的结果。

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