使用机器学习的商业智能客户流失预测

Victor Chimankpam Nwaogu, Kamil Dimililer
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引用次数: 3

摘要

电信行业的特点是各种规模的行业参与者之间的激烈竞争,因此客户流失预测和管理是这些组织面临的最重要的挑战之一。然而,有各种各样的机器学习技术被用来预测可能从一家电信公司跳槽到另一家电信公司的客户。本文试图解决一个分类和预测问题,其中哪些客户可能流失,哪些客户不会从Teldata数据集进行预测。为了实现这一点,使用了SVM(线性、RBF、多项式和sigmoid核)、MLP(带有Adam、SGD和LBFGS算法)和Neural Networks(带有Adam优化技术)机器学习算法,并将结果进行比较,以选择最适合问题的技术。结果表明,结合Adam优化技术的神经网络优于所列出的其他技术。
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 For Business Intelligence Using Machine Learning
The telecom industry is characterized by intense competition among industry players on every scale such that customer churn prediction and management is, by far, one of the highly ranked challenges faced by these organizations. There are, however, a variety of machine learning techniques utilized to predict a customer who will likely churn from a telecom firm to another. This paper sorts to solve a classification and prediction problem in which customers who are likely to churn and those who will not were supposed to be predicted from the Teldata data set. To achieve this, SVM (liner, RBF, polynomial, and sigmoid kernels), MLP (with Adam, SGD, and LBFGS algorithms) and Neural Networks (with Adam optimization technique) machine learning algorithms were employed and results compared to choose which technique best fits the problem. Results showed that Neural Network with Adam optimization technique outperformed the other techniques listed.
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