Prediction of Customer Churn in Telecom Industry: A Machine Learning Perspective

Lopamudra Hota, P. Dash
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引用次数: 2

Abstract

The business world is becoming increasingly saturated in today's competitive environment. There is a great deal of competition in the telecommunications industry, especially due to various vibrant service providers. As a result, they have had difficulty retaining their existing customers. As attracting new customers is much more costly than retaining current ones, now is the time to ensure the telecom industry maintains value by retaining customers over acquiring new ones. Numerous machine learning and data mining methods have been proposed in the literature to predict customer churners using heterogeneous customer records over the past decade. This research gives a brief idea on the Customer Churn problem, and explores how various machine learning techniques can be used to predict customer churn via models such as XGBoost, GradientBoost, AdaBoost, ANN, Logistic Regression and Random Forest, and also compare the effectiveness of the models in term of accuracy. Keyword : Machine Learning, Customer Churn, Prediction Model, Random Forest, XGBoost, AdaBoost, GBoost
电信行业客户流失预测:机器学习视角
在当今竞争激烈的环境中,商业世界正变得越来越饱和。电信行业的竞争非常激烈,特别是由于各种充满活力的服务提供商。因此,他们很难留住现有的客户。由于吸引新客户比留住现有客户的成本要高得多,现在是确保电信行业通过留住客户而不是获得新客户来保持价值的时候了。在过去的十年中,文献中提出了许多机器学习和数据挖掘方法来使用异构客户记录来预测客户流失。本研究简要介绍了客户流失问题,并探讨了如何使用各种机器学习技术通过XGBoost, GradientBoost, AdaBoost, ANN, Logistic Regression和Random Forest等模型来预测客户流失,并比较了模型在准确性方面的有效性。关键词:机器学习,客户流失,预测模型,随机森林,XGBoost, AdaBoost, GBoost
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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