基于机器学习分类器的电信行业客户流失预测

Nurul Izzati Mohammad, Saiful Adli Ismail, M. Kama, O. Yusop, Azri Azmi
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引用次数: 7

摘要

客户流失是电信行业面临的主要问题之一。本研究旨在找出影响客户流失的因素,并建立有效的客户流失预测模型,并提供最佳的数据可视化结果分析。数据集来自Kaggle开放数据网站。提出的流失预测分析方法包括几个阶段:数据预处理、分析、实现机器学习算法、分类器评估和选择最佳预测方法。数据预处理过程包括数据清洗、数据转换和特征选择三个主要动作。选择的机器学习分类器有逻辑回归、人工神经网络和随机森林。然后,采用准确率、精密度、召回率和错误率等性能指标对分类器进行评价,以寻找最佳分类器。基于本研究,输出结果表明逻辑回归优于人工神经网络和随机森林。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Customer Churn Prediction In Telecommunication Industry Using Machine Learning Classifiers
Customer churn is one of the main problems in telecommunication industry. This study aims to identify the factors that influence customer churn and develop an effective churn prediction model as well as provide best analysis of data visualization results. The dataset has been collected from Kaggle open data website. The proposed methodology for analysis of churn prediction covers several phases: data pre-processing, analysis, implementing machine learning algorithms, evaluation of the classifiers and choose the best one for prediction. Data preprocessing process involved three major action, which are data cleaning, data transformation and feature selection. Machine learning classifiers was chosen are Logistic Regression, Artificial Neural Network and Random Forest. Then, classifiers were evaluated by using performance measurement which are accuracy, precision, recall and error rate in order to find the best classifier. Based on this study, the output shows that logistic regression outperform compared to artificial neural network and random forest.
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