Automation of Credit Card Customer Churn Analysis using Hybrid Machine Learning Models

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Abstract

Credit Card Customer Churn Analysis (C4A) is a phenomenon where customers stop using a specific business credit card service. Predicting customer churn is crucial for Credit Card (CC) companies because it enables them to spot at-risk customers and take precautions to retain them. The aim of the paper named C4A is to create a model that accurately predicts customers who are most likely to stop using CC. The paper involves gathering and analyzing customer information from Kaggle, including transaction history, demographics and credit card usage patterns for prediction. Machine learning algorithms namely, Logistic Regression, KNN, XGBoost Classifier, Decision Tree and Hybrid Models integrating Logistic Regression and KNN, Logistic Regression and Decision Tree are used to train to find patterns and correlations that point to customer churn. The accuracy of the proposed method is 0.846 with LR, 0.849 with KNN, 0.90 with a hybrid model integrating LR and KNN, 0.928 by integrating LR and DT, 0.91 with DT, and 0.93 with XGBoost.

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APA

Kumar, R. P. R., Sahithi, B., Neeharika, K., Shivaleela, M., Singh, D., & Reddy, K. R. K. (2023). Automation of Credit Card Customer Churn Analysis using Hybrid Machine Learning Models. In E3S Web of Conferences (Vol. 430). EDP Sciences. https://doi.org/10.1051/e3sconf/202343001034

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