A Review on Machine Learning and Deep Learning Models for Churn Rate Prediction

Machine learning has revolutionized churn prediction, enabling organizations to anticipate and mitigate risks effectively. By leveraging historical data and advanced algorithms, businesses can identify at-risk customers or employees and take proactive measures to retain them As markets become increa...

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Bibliographic Details
Published inINTERNATIONAL JOURNAL OF SCIENTIFIC RESEARCH IN ENGINEERING AND MANAGEMENT Vol. 9; no. 8; pp. 1 - 9
Main Authors Nagar, Devkinandan, Gehlot, Pooja, Tiwari, Prof. C.K.
Format Journal Article
LanguageEnglish
Published 16.08.2025
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Summary:Machine learning has revolutionized churn prediction, enabling organizations to anticipate and mitigate risks effectively. By leveraging historical data and advanced algorithms, businesses can identify at-risk customers or employees and take proactive measures to retain them As markets become increasingly competitive, retaining existing customers has proven to be more cost-effective than acquiring new ones. In this context, machine learning (ML) has emerged as a powerful tool for analyzing customer behavior and predicting churn with high accuracy. By leveraging vast datasets and sophisticated algorithms, businesses can proactively identify at-risk customers and take targeted actions to retain them. The success of churn prediction largely depends on the quality and relevance of input features. Important features include customer demographics, transaction frequency, service usage patterns, complaint records, and engagement metrics. Feature engineering, which involves creating new features or transforming existing ones, is a critical step in improving model performance This paper presents a comprehensive survey of statistical models for forecasting churn rates along with associated challenges that the sector faces. Keywords: Churn Rate, Statistical Modelling, Machine Learning, Deep Learning, Regression Analysis.
ISSN:2582-3930
2582-3930
DOI:10.55041/IJSREM51841