Telecom Churn Analysis using Machine Learning in Smart Cities

Ashish Sharma, Prafullit Shukla, Mahendra Kumar Gourisaria, B. Sharma, I. Dhaou
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Abstract

With the increase in the Telecom industry, service providers are more attentive toward the action of becoming larger or more extensive to the subscriber base. For surviving in telecom companies, the continued possession of holding customers must be a big challenge. According to consideration in the telecom environment, the market price of obtaining the new purchaser is more than holding the existing purchaser. Through collecting knowledge from the telecom industry to analyze the association of the customer whether will leave or not the company. Such types of the Decision tree and Logistic regression model have been compared on the 3334 instances of the dataset. The classification model derived from logistic regression has an accuracy of 80% and the decision tree classifier with an accuracy of 97%.
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智能城市中使用机器学习的电信客户流失分析
随着电信行业的发展,服务提供商更加关注扩大或扩大用户基础的行动。要想在电信公司生存下去,持续拥有现有客户肯定是一个巨大的挑战。根据电信环境的考虑,获得新收购者的市场价格高于持有现有收购者的市场价格。通过收集电信行业的知识,分析客户是否会离开公司的关联。这些类型的决策树和逻辑回归模型已经在数据集的3334个实例上进行了比较。由逻辑回归导出的分类模型的准确率为80%,决策树分类器的准确率为97%。
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