电信行业的客户流失预测

Georgina Esteves, João Mendes-Moreira
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引用次数: 8

摘要

电信公司正在认识到客户满意度和公司收入之间存在的联系。在电信行业,客户流失是指客户终止与公司的关系。电信客户流失预测最近引起了利益相关者的极大兴趣,他们注意到留住一个客户比获得一个新客户要便宜得多。这项研究比较了六种方法,使用不同的算法来识别哪些客户更接近放弃他们的电信提供商。这些算法是:KNN,朴素贝叶斯,C4.5,随机森林,Ada Boost和ANN。使用We Do技术提供的真实数据,延长了必要的细化时间,但确保了所开发的算法和模型可以应用于真实世界的情况。根据曲线下、敏感性和特异性三个指标对模型进行评价,对前两个指标给予特殊权重。在所有的测试用例中,随机森林算法被证明是最合适的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Churn perdiction in the telecom business
Telecommunication companies are acknowledging the existing connection between customer satisfaction and company revenues. Customer churn in telecom refers to a customer that ceases his relationship with a company. Churn prediction in telecom has recently gained substantial interest of stakeholders, who noticed that retaining a customer is substantially cheaper that gaining a new one. This research compares six approaches using different algorithms that identify the clients who are closer to abandon their telecom provider. Those algorithms are: KNN, Naive Bayes, C4.5, Random Forest, Ada Boost and ANN. The use of real data provided by We Do technologies extended the refinement time necessary, but ensured that the developed algorithm and model can be applied to real world situations. The models are evaluated according to three criteria: are under curve, sensitivity and specificity, with special weight to the first two criteria. The Random Forest algorithm proved to be the most adequate in all the test cases.
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