电信行业探索性数据分析与客户流失预测

K. Singh, Prabh Deep Singh, Ankit Bansal, Gaganpreet Kaur, Vikas Khullar, V. Tripathi
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引用次数: 0

摘要

由于客户流失和环境影响,电信业务是收入损失风险较高的关键行业之一。因此,高效和有效的客户流失管理包括有针对性的营销活动、特别促销或其他激励措施,以保持客户参与技术进步。现在有很多可用的机器学习算法,但很少有算法能够有效地考虑到电信数据集的不对称结构。机器学习算法的效率也可能取决于它们接近真实世界电信数据的程度,而不是公开可用的数据集。因此,研究人员对该数据集使用了各种预测模型,包括XGBoost。在本地数据集上实现的准确率为82.80%。结果表明,该预测模型具有较强的技术能力和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploratory Data Analysis and Customer Churn Prediction for the Telecommunication Industry
The telecommunications business is one of the key industries with a higher risk of revenue loss owing to client turnover and environmental impact. Thus, efficient and effective churn management includes targeted marketing campaigns, special promotions, or other incentives to keep the customer engaged in technological progress. There are a lot of machine learning algorithms available now, but very few of them can effectively take into account the asymmetrical structure of the telecommunications dataset. The efficiency of machine learning algorithms may also vary depending on how closely they approximate the real-world telecommunications data rather than the publicly available dataset. As a result, the researchers used various predictive models, including XGBoost, for this dataset. The accuracy achieved on the native dataset is 82.80%. Results show the effectiveness of the predictive model with great technological capabilities.
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