利用神经网络预测电信用户流失率

Mageshkumar N, Vijayaraj A, S. Chavva, Gururama Senthilvel
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引用次数: 0

摘要

导言:由于客户流失直接影响收入,电信行业面临着巨大挑战。为了更好地了解和解决这一问题,公司正在研究确定影响客户流失的内部问题的技术。目标:本文概述了电信行业的客户流失情况。方法:文章介绍了一种先进的客户流失预测模型,该模型利用了最先进的技术,包括神经网络、机器学习和其他尖端创新技术,以达到极高的准确率。通过分析从多家电信公司收集的各种参数和数据集,可以获得有价值的见解。结果:模型在测试数据上的性能可通过准确度得分、曲线下面积(AUC)、灵敏度、特异性和其他性能指标进行评估。结论:为了有效管理大量数据集,企业可以利用大数据技术。这使他们能够预测客户流失的概率,并制定积极主动的策略来留住客户群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of User Attrition in Telecommunication Using Neural Network
INTRODUCTION: The telecommunications industry faces significant challenges due to customer attrition, which directly impacts revenue. To better understand and address this issue, Companies are looking into techniques to determine the internal issues that affect customer churn. OBJECTIVES: This article offers an overview of customer attrition within the telecommunications sector. METHODS: It introduces an advanced churn prediction model harnessing state-of-the-art technologies, including neural networks, machine learning, and other cutting-edge innovations, to achieve remarkably high accuracy rates. By analyzing diverse parameters and datasets collected from multiple telecom companies, valuable insights can be gained. RESULTS: The model's performance on test data can be evaluated using metrics such as Accuracy Score, Area under Curve (AUC), Sensitivity, Specificity, and other performance indicators. CONCLUSION: In order to effectively manage extensive datasets, organizations can leverage Big Data technology. This empowers them to forecast the probability of customer churn and put in place proactive strategies to retain their customer base.
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