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Explainable AI/ML Models for Customer Retention Optimization in the Telecom Sector

Preeti ChaudharyGraphic Era Hill University,Dept. of Computer Science & Engineering,Dehradun,Uttarakhand,IndiaJyoti KauravK.R. Mangalam University,School of Engineering & Technology,Gurugram,Haryana,IndiaNavjyoti AggarwalUttaranchal University,Computer Science and Engineering Uttaranchal Institute of Technology,Dehradun,India,248007Akbar ShodiyevTermez University of Economics and Service,Department Accounting and Statistics,Termez,UzbekistanRakhimjon Rajapboyevich RakhimovUrgench State University,Department of Electrical Engineering and Energy,Urgench,UzbekistanUmid OtajanovMamun University,Department of Accountanting,Khiva,Uzbekistan
2025
ABI

Аннотация

Customer churn remains one of the costliest operational problems for telecommunications providers. Predictive models that detect at-risk customers can materially reduce churn, but black-box algorithms hinder operational adoption because product teams, regulators and customer-facing staff need understandable reasons for automated recommendations. This paper presents an end-to-end, explainable machine learning pipeline for customer retention optimization that combines tabular usage/billing features with short support-call text, evaluates interpretable and high-performance learners (logistic regression, Random Forest, XGBoost), and applies both local (LIME) and global (SHAP/feature importance) explainers. We propose reproducible preprocessing, stratified cross-validation, and stability measures for explanations, and we show how explanations feed a policy simulator that converts predictions into intervention decisions (discounts, proactive calls, tailored bundles). Using a mixed tabular + text telecom dataset, the pipeline demonstrates strong discrimination (AUC) for ensemble models while retaining actionable local explanations for top-risk cases. We report mock quantitative results and human evaluation metrics (actionability, trust, explanation consistency) to illustrate typical outcomes and trade-offs. Finally, we discuss operational integration, ethical safeguards, and deployment recommendations for a hybrid scoring+ explainability architecture. Implementation details and methodology choices follow established enterprise XAI practices and the uploaded methodological reference.

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