
The telecoms industry is developing rapidly, which has increased competition. Retaining customers is now a highlysignificant strategic objective. This article discusses the latest findings from studies that employ machine learning (ML) and deeplearning (DL) to forecast the number of telecom customers who would switch. Based on the study, telecom operators are able todetermine if customers are going to cancel their subscriptions based on their demographic, service usage, and behaviour information.This sequence deals with decision tree models, logistic regression, RNNs, support vector machines, and artificial neural networks(ANNs). The study also explores the application of churn prediction in real-life scenarios to improve customer retention, enabletargeted marketing, and enhance service quality. The largest issues, such as data imbalance, explainability, and scalability, anddirections for future research that encompass hybrid and explainable AI approaches. This study highlights the essential role of MLdrivenchurn prediction in ensuring customer loyalty and maximizing the performance of telecom businesses.
Machine Learning, Customer experience, Telecom Customer Churn Prediction, Predictive Analytics, Telecommunications Industry
Machine Learning, Customer experience, Telecom Customer Churn Prediction, Predictive Analytics, Telecommunications Industry
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