电信行业的流失预测:提升算法比较分析

Opara John Ogbonna, Gilbert I.O. Aimufua, Muhammad Umar Abdullahi, Suleiman Abubakar
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引用次数: 0

摘要

客户流失是电信行业的一个主要问题,它带来了诸多挑战,如财务影响、客户流失和营销成本增加等。机器学习和人工智能领域取得的进步极大地扩展了预测客户流失的可能性,为有效处理客户流失和提高客户保留率提供了一个前景广阔的解决方案。本研究介绍了一种客户流失预测模型,该模型利用机器学习方法帮助电信公司提高客户保留率和降低客户流失率。研究采用了机器学习技术,如 Adaboost、梯度提升和极端梯度提升 (XGBoost),以评估广泛的数据集,并通过比较评估提供客户流失预测。该方法包括从 Kaggle 数据池中提取数据、进一步准备数据和识别相关特征。合成少数群体过度采样技术(SMOTE)被用作减轻不平衡数据带来的挑战的一种策略。数据集以 75% 对 25% 的比例划分为训练集和测试集。XGBoost 模型展示了卓越的准确率和召回率,在所研究的模型中表现最佳。准确率达到 89.51%。XGBoost 方法的召回率为 92.48%,是所评估的三种算法中最高的。梯度提升算法的召回率为 87.69%,Adaboost 算法的召回率为 85.13%。这些发现凸显了机器学习技术在应对电信行业客户流失挑战方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Churn Prediction in Telecommunication Industry: A Comparative Analysis of Boosting Algorithms
The issue of customer churn, which is a major problem in the telecommunications industry, poses several challenges, such as financial  implications, client attrition, and increased marketing costs. The advancements achieved in the domain of machine learning and artificial  intelligence have significantly expanded the possibilities for forecasting customer churn, presenting a promising resolution for effectively  handling customer attrition and enhancing customer retention. This study presents a customer churn prediction model that  uses machine learning approaches to assist telecom firms in enhancing customer retention and mitigating churn rates. The study  employs machine learning techniques, such as Adaboost, Gradient Boosting, and Extreme Gradient Boosting (XGBoost), in order to  evaluate extensive datasets and provide predictions on customer churn via a comparative evaluation. The methodology involves  extracting data from the Kaggle data pool, doing further data preparation, and identifying relevant features. The Synthetic Minority  Oversampling Technique (SMOTE) is used as a strategy to mitigate the challenges posed by imbalanced data. The dataset is partitioned  into training and testing sets at a ratio of 75% to 25%. The XGBoost model demonstrated superior accuracy and recall, positioning itself as  the top-performing model among the studied models. The attained accuracy rate was 89.51%. The XGBoost method has a recall rate  of 92.48%, which is the highest of the three algorithms evaluated. Gradient boosting follows with a recall rate of 87.69%, while Adaboost achieves a recall rate of 85.13%. These findings underscore the potential of machine learning techniques for addressing the challenges  posed by customer churn in the telecommunications industry. 
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