This paper surveys data mining techniques used for customer churn analysis in the telecom industry, highlighting the importance of customer retention over acquiring new customers due to high churn rates. It reviews various predictive data mining methods, including neural networks, statistical techniques, and decision trees, emphasizing their effectiveness in identifying churn patterns and predicting customer behavior. The findings stress that understanding the reasons for churn can lead to more effective customer relationship management and improved business outcomes.