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GSM churn management by using fuzzy c-means clustering and adaptive neuro fuzzy inference system

机译:基于模糊c均值聚类和自适应神经模糊推理系统的GSM流失管理

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摘要

Churn management is important and critical issue for Global Services of Mobile Communications (GSM) operators to develop strategies and tactics to prevent its subscribers to pass other GSM operators. First phase of churn management starts with profile creation for the subscribers. Profiling process evaluates call detail data, financial information, calls to customer service, contract details, market details and geographic and population data of a given state. In this study, input features are clustered by x-means and fuzzy c-means clustering algorithms to put the subscribers into different discrete classes. Adaptive Neuro Fuzzy Inference System (ANFIS) is executed to develop a sensitive prediction model for churn management by using these classes. First prediction step starts with parallel Neuro fuzzy classifiers. After then, FIS takes Neuro fuzzy classifiers' outputs as input to make a decision about churners' activities.
机译:流失管理对于移动通信全球服务(GSM)运营商制定策略和策略以防止其订户超越其他GSM运营商而言是重要且至关重要的问题。流失管理的第一阶段从为订户创建配置文件开始。分析过程评估给定状态的呼叫详细信息数据,财务信息,对客户服务的呼叫,合同详细信息,市场详细信息以及地理和人口数据。在这项研究中,输入特征通过x均值和模糊c均值聚类算法进行聚类,以将订户分为不同的离散类。通过使用这些类,执行自适应神经模糊推理系统(ANFIS)来开发用于流失管理的敏感预测模型。第一步预测从并行神经模糊分类器开始。此后,FIS将神经模糊分类器的输出作为输入,以决定搅拌器的活动。

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