Customer Churn Prediction using Machine Learning Models

Glory Sam, P. Asuquo, Bliss Stephen
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Abstract

Customer churn is a critical concern for the telecommunication industry. Understanding and predicting customer churn can lead to more effective retention strategies and an increase in profitability. Predicting customer churn allows telecommunication companies to identify potentially dissatisfied customers early on and take proactive measures to retain them. Due to a large client base, the telecom industry generates a large volume of data on a daily basis. Decision makers and business analysts stressed that acquiring new customers is more expensive than retaining existing ones. Business analysts and customer relationship management (CRM) analysts must understand the reasons for customer churn as well as behaviour patterns from existing churn data. This paper proposes a churn prediction model that uses classication and clustering techniques to identify churn customers and provides the factors that contribute to customer churning in the telecom sector. The results presented shows that XBoost and Random Forest achieved higher prediction accuracy when compared to K- Nearest Neighbours, Support Vector Machines and Decision Trees in terms of accuracy, precision, F1-Score and recall.
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使用机器学习模型预测客户流失率
客户流失是电信行业的一个重要问题。了解和预测客户流失率可以制定更有效的客户挽留战略,提高盈利能力。预测客户流失率可以让电信公司及早发现潜在的不满意客户,并采取积极措施留住他们。由于客户群庞大,电信行业每天都会产生大量数据。决策者和业务分析师强调,获取新客户比留住老客户成本更高。业务分析师和客户关系管理 (CRM) 分析师必须从现有的客户流失数据中了解客户流失的原因和行为模式。本文提出了一个客户流失预测模型,该模型使用分类和聚类技术来识别流失客户,并提供电信行业客户流失的因素。研究结果表明,与 K- 近邻、支持向量机和决策树相比,XBoost 和随机森林在准确率、精确度、F1-分数和召回率方面都达到了更高的预测精度。
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