ABSTRACT:This paper explores the phenomenon of customer churn in the telecommunications industry and investigates howmultiple regressionanalysis and machine learning techniques can be employed to uncover insights from data, aiding in churn prediction and management. Byexamining various factors influencing customer churn and leveraging advanced analytical methods, telecom companies candevelopproactive strategies to mitigate churn and enhance customer retention. In the dynamic landscape of telecommunications, customer retentionis paramount for sustainable growth and competitiveness. This study navigates the intricate realm of churn analysis and prediction, delvinginto the pivotal role of advanced analytics and machine learning techniques in understanding and managing customer churn. Throughanexhaustive exploration of key findings, it becomes apparent that the multifaceted nature of churn behavior demands sophisticateddata-driven methodologies for precise prediction and mitigation. Emerging trends such as real-time prediction and personalizedretentionstrategies offer promising avenues for telecom operators to fortify customer loyalty and propel business expansion. Recommendationsunderscore the critical importance of investing in advanced analytics capabilities, fostering a customer-centric ethos, and embracinginnovation. By harnessing the power of data-driven insights and strategic initiatives, telecom operators can optimize the customerexperience, curtail churn rates, and navigate towards enduring success in an intensely competitive market milieu. KEYWORDS: Churn Prediction, Multi Regression Model, Supervised Machine Learning, Customer Loyalty, Advanced Analytics, Customer Retention, Machine Learning, Predictive modeling
Tasneem QaraeenNora QaqourSameh Taqatqa
Suresh DaraRohan DuvvuT. Satya Rama SubrahmanyamSagar BochelaMagapu Radha Krishna Sai