Churn prepaid customers classified by HyperOpt techniques

Andreea Dumitrache, D. Melian, Delia Bălăcian, Alexandra Nastu, Stelian Stancu
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引用次数: 3

Abstract

Abstract The telecommunications industry is representative when it comes to a country’s economy. In this industry, the customer plays a very important role in maintaining a stable income. The churn customer is one of the most important concerns for large companies. This increased attention is due to its direct effect on the revenues of large companies in the telecommunications industry, companies being in a constant search to develop ways to predict this type of customer. The aim of our paper is to identify potential customers at risk of churn using modern data mining techniques, often used in the business world. From the nine techniques tested, we choose as the churn prediction model, the technique with the highest performance. The effectiveness of the model is tested and evaluated by the f1-score. The model developed in the paper uses machine learning techniques on the Python platform, exploring a wide range of algorithms from logistic regression and the method of balancing the analyzed data set (Balanced Random Forest) to supervised learning methods (K-Nearest Neighbors, Naive Bayes) and optimization packages (Ligh GBM, CATBoost, ADABoost, RUSBoost, Stochastic Gradient Descent). The techniques analyzed in this paper cover a diverse range of methods that are compared in terms of performance. RUSBoost proves to be the best churn prediction model for telecom customers in this study. RUSBoost has the lowest loss function of all the tested techniques.
流失通过HyperOpt技术分类的预付费客户
电信业在一个国家的经济中具有代表性。在这个行业中,客户对于维持稳定的收入起着非常重要的作用。流失客户是大公司最关心的问题之一。这种日益增加的关注是由于它对电信行业大公司的收入有直接影响,公司一直在寻找预测这类客户的方法。我们论文的目的是使用现代数据挖掘技术识别有流失风险的潜在客户,这些技术通常用于商业世界。从测试的9种技术中,我们选择性能最高的技术作为流失预测模型。模型的有效性通过f1分值进行检验和评价。本文开发的模型使用Python平台上的机器学习技术,探索了从逻辑回归和平衡分析数据集的方法(平衡随机森林)到监督学习方法(k -近邻,朴素贝叶斯)和优化包(light GBM, CATBoost, ADABoost, RUSBoost,随机梯度下降)的广泛算法。本文分析的技术涵盖了从性能方面进行比较的各种方法。在本研究中,RUSBoost被证明是电信客户流失预测的最佳模型。RUSBoost具有所有测试技术中最低的损失函数。
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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