Supervised Learning Algorithms for Predicting Customer Churn with Hyperparameter Optimization

Q3 Computer Science
Manal Loukili
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引用次数: 3

Abstract

Abstract Churn risk is one of the most worrying issues in the telecommunications industry. The methods for predicting churn have been improved to a great extent by the remarkable developments in the word of artificial intelligence and machine learning. In this context, a comparative study of four machine learning models was conducted. The first phase consists of data preprocessing, followed by feature analysis. In the third phase, feature selection. Then, the data is split into the training set and the test set. During the prediction phase, some of the commonly used predictive models were adopted, namely k-nearest neighbor, logistic regression, random forest, and support vector machine. Furthermore, we used cross-validation on the training set for hyperparameter adjustment and for avoiding model overfitting. Next, the hyperparameters were adjusted to increase the models' performance. The results obtained on the test set were evaluated using the feature weights, confusion matrix, accuracy score, precision, recall, error rate, and f1 score. Finally, it was found that the support vector machine model outperformed the other prediction models with an accuracy equal to 96.92%. Keywords: Churn Prediction, Classification Algorithms, Hyperparameter Optimization, Machine Learning, Telecommunications.
基于超参数优化的客户流失预测的监督学习算法
客户流失风险是电信行业最令人担忧的问题之一。由于人工智能和机器学习的显著发展,预测流失的方法在很大程度上得到了改进。在此背景下,对四种机器学习模型进行了比较研究。第一阶段包括数据预处理,然后是特征分析。在第三阶段,特征选择。然后,将数据分成训练集和测试集。在预测阶段,采用了一些常用的预测模型,即k近邻、逻辑回归、随机森林和支持向量机。此外,我们对训练集进行了交叉验证,以进行超参数调整和避免模型过拟合。然后,调整超参数以提高模型的性能。使用特征权重、混淆矩阵、准确率评分、准确率、召回率、错误率和f1评分对测试集上获得的结果进行评估。最后发现,支持向量机模型的预测准确率达到96.92%,优于其他预测模型。关键词:流失预测,分类算法,超参数优化,机器学习,电信。
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来源期刊
International Journal of Advances in Soft Computing and its Applications
International Journal of Advances in Soft Computing and its Applications Computer Science-Computer Science Applications
CiteScore
3.30
自引率
0.00%
发文量
31
期刊介绍: The aim of this journal is to provide a lively forum for the communication of original research papers and timely review articles on Advances in Soft Computing and Its Applications. IJASCA will publish only articles of the highest quality. Submissions will be evaluated on their originality and significance. IJASCA invites submissions in all areas of Soft Computing and Its Applications. The scope of the journal includes, but is not limited to: √ Soft Computing Fundamental and Optimization √ Soft Computing for Big Data Era √ GPU Computing for Machine Learning √ Soft Computing Modeling for Perception and Spiritual Intelligence √ Soft Computing and Agents Technology √ Soft Computing in Computer Graphics √ Soft Computing and Pattern Recognition √ Soft Computing in Biomimetic Pattern Recognition √ Data mining for Social Network Data √ Spatial Data Mining & Information Retrieval √ Intelligent Software Agent Systems and Architectures √ Advanced Soft Computing and Multi-Objective Evolutionary Computation √ Perception-Based Intelligent Decision Systems √ Spiritual-Based Intelligent Systems √ Soft Computing in Industry ApplicationsOther issues related to the Advances of Soft Computing in various applications.
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