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Mobile phone customers churn prediction using elman and Jordan Recurrent Neural Network

机译:手机客户使用Elman和Jordan经常性神经网络预测

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The number of mobile phone user increases consistently year by year. While gaining new customer is harder than maintaining existing one, various churn predictor engine has been developed to fulfill this purpose. The implementation of Recurrent Neural Network in predicting churn is still new to this field. Same goes for Reinforcement Learning used which is the Q-learning. For that reason, this project main purpose is to develop two famous Recurrent Neural Networks; Elman and Jordan, and also equipping them with Q-Learning; to predict the probabilities of mobile phone churning rates. The scope of this project is to evaluate the performance between ERNN and JRNN. Both ERNN and JRNN algorithm had been tested using data gathered from mobile phone users and it is found that JRNN had shown to perform better in churn prediction.
机译:移动电话用户数量持续增加一年。 在获得新客户的同时,比维护现有的更难,已经开发出各种流产预测引擎以实现此目的。 在预测流失中的经常性神经网络的实施仍然是该领域的新功能。 与Q学习使用的加强学习一样,也是如此。 因此,该项目主要目的是开发两种着名的经常性神经网络; 埃尔曼和乔丹,并配备了Q-Learning; 预测手机搅拌率的概率。 该项目的范围是评估ERNN和JRNN之间的性能。 使用从手机用户收集的数据测试了ERNN和JRNN算法,发现JRNN在流失预测中表现更好。

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