Abstract

Customer churn will cause the value flowing from customers to enterprises to decrease. If customer churn continues to occur, the enterprise will gradually lose its competitive advantage. When the growth of new customers cannot meet the needs of enterprise development, the enterprise will fall into a survival dilemma. Focusing on the customer churn prediction model, this paper takes the telecom industry in China as the research object, establishes a customer churn prediction model by using a logistic regression algorithm based on the big data of high-value customer operation in the telecom industry, effectively identifies the potential churned customers, and then puts forward targeted win-back strategies according to the empirical research results. This paper analyzes the trends and causes of customer churn through data mining algorithms and gives the answers to such questions as how the customer churn occurs, the influencing factors of customer churn, and how enterprises win back churned customers. The results of this paper can better serve the practice of customer relationship management in the telecom industry and provide a reference for the telecom industry to identify high-risk churned customers in advance, enhance customer loyalty and viscosity, maintain “high-value” customers, and continue to provide customers with “value” and reduce the cost of maintaining customers.

Highlights

  • Loyal customers play an important role in improving business performance and can promote the core competitiveness of enterprises [1, 2]

  • Loyal customers can help enterprises reduce the cost of publicity and negotiation and attract more new customers with herd mentality, reducing customer development costs and increasing the opportunities and time for enterprises to obtain basic profits

  • Compared with new customers, the retention rate of loyal customers is higher, and the probability of Discrete Dynamics in Nature and Society competitive marketing activities is lower, and because the enterprise knows the preferences of the existing customers, the cost of providing services is lower

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Summary

A Prediction Model of Customer Churn considering Customer Value

Received 28 June 2021; Revised 23 July 2021; Accepted 2 August 2021; Published 9 August 2021. If customer churn continues to occur, the enterprise will gradually lose its competitive advantage. Focusing on the customer churn prediction model, this paper takes the telecom industry in China as the research object, establishes a customer churn prediction model by using a logistic regression algorithm based on the big data of high-value customer operation in the telecom industry, effectively identifies the potential churned customers, and puts forward targeted win-back strategies according to the empirical research results. Is paper analyzes the trends and causes of customer churn through data mining algorithms and gives the answers to such questions as how the customer churn occurs, the influencing factors of customer churn, and how enterprises win back churned customers. Focusing on the customer churn prediction model, this paper takes the telecom industry in China as the research object, establishes a customer churn prediction model by using a logistic regression algorithm based on the big data of high-value customer operation in the telecom industry, effectively identifies the potential churned customers, and puts forward targeted win-back strategies according to the empirical research results. is paper analyzes the trends and causes of customer churn through data mining algorithms and gives the answers to such questions as how the customer churn occurs, the influencing factors of customer churn, and how enterprises win back churned customers. e results of this paper can better serve the practice of customer relationship management in the telecom industry and provide a reference for the telecom industry to identify high-risk churned customers in advance, enhance customer loyalty and viscosity, maintain “high-value” customers, and continue to provide customers with “value” and reduce the cost of maintaining customers

Introduction
Literature Review
Findings
Data and Variables
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