机器学习在电信服务提供商客户满意度预测中的应用

Khalid M. B. A. Joolfoo, R. Jugurnauth, Muhammad B. A. Joolfoo
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引用次数: 0

摘要

蜂窝网络中的通话中断决定了行业的顶级玩家,而评级最高的蜂窝网络可以在市场上维持下去,而评级最低的蜂窝网络甚至可能面临破产。客户对通话质量的满意度是任何电信组织必须关注的一个重要因素,以便在市场上长期成功地生存。这项研究展示了机器学习如何应用于预测客户对各种电信服务提供商的掉线质量的满意度。数据集来自Kaggle,开发的机器学习模型已经使用该数据集进行了训练和测试。本研究采用随机森林分类器进行分类。关注的参数包括话费、掉话和用户数量。该研究以三个月的数据样本为时间轴(9月至11月),通过开发机器学习模型来预测和估计蜂窝网络的客户满意度,该模型在通话期间检查通话质量,并在通话结束时提供客户评级(通话评级)。通过查全率、查准率、查准率和f1评分对模型进行评价。所获得的结果在预测呼叫质量的客户满意度方面呈现出91%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Machine Learning in Predicting Customer Satisfaction of Telecom Service Providers
Call drop in the cellular networking decides the top players of the industry where the most rated cellular network could sustain in the market and the least rated could face even bankruptcy. Customer satisfaction towards call quality is an important factor that any telecom organization must focus in order to survive successfully in the market in the long run. This research has demonstrated on how machine learning can be applied to predict customer satisfaction towards call drop quality of various telecom service providers. The dataset was acquired from Kaggle and the developed machine learning model has been trained and tested using the dataset. The research uses Random Forest Classifier for classification. The parameters under focus are the call rating, call drop, and the number of subscribers. The study focused on three months of data samples as the timeline (September to November) to predict and estimate customer satisfaction of cellular networking through developing a machine learning model that examined the call quality during a call, with the rating provided by the customers (call rating) at the call termination. The developed model was measured for its performance through recall, precision, accuracy and F1-score. The results obtained had rendered 91% accuracy in terms of predicting the customer satisfaction of call quality.
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