Profit Maximization Analysis Based on Data Mining and the Exponential Retention Model Assumption with Respect to Customer Churn Problems

Zhaojing Zhang, R. Wang, Weihong Zheng, Shizhan Lan, D. Liang, Hao Jin
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引用次数: 13

Abstract

Confronted with fierce competition, an increasing number of telecommunication companies in China realize that they can increase proflts by reducing the rate of customer churn rather than attracting the same number of new customers. Recently, the availability of big data has increased, which has stimulated the development of data mining techniques. Identifying methods by which to maximize proflts is vital for operators based on big data. Novelly, this paper studies three key factors of the customer churn problem, namely, churn rate, prediction performance, and retention capability. We propose a proflt function that maximizes proflts under different conditions and obtain favorable results in applying it to sample data from China Mobile Communications Corporation. Theoretically, about 7.72 million Chinese Yuan per month can be obtained by applying proposed model to China Mobile Group Guangxi Company Limited, making our research of great economic value.
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基于数据挖掘和指数保留模型假设的客户流失问题利润最大化分析
面对激烈的竞争,中国越来越多的电信公司意识到,他们可以通过降低客户流失率来增加利润,而不是吸引同样数量的新客户。近年来,大数据的可用性增加,刺激了数据挖掘技术的发展。对于基于大数据的运营商来说,确定利润最大化的方法至关重要。本文新颖地研究了客户流失问题的三个关键因素,即流失率、预测性能和保留能力。我们提出了在不同条件下利润最大化的proft函数,并将其应用到中国移动通信公司的样本数据中,取得了良好的效果。理论上,将该模型应用于中国移动集团广西有限公司,每月可获得约772万元人民币,具有较大的经济价值。
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