TY - GEN
T1 - Clustering and Anomaly Detection for Churn Prediction in POS Payment Systems
AU - Asitimbay, José
AU - Grijalva, Felipe
AU - Loza, Malena
AU - Vega-Sánchez, José
AU - Flores-Moyano, Ricardo
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - This work addresses the early identification of businesses at risk of ceasing or limiting their use of point-of-sale (POS) services, resulting in decreased transaction volumes - a key indicator of customer churn. In the highly competitive POS market, customer retention is essential, as acquiring new clients is typically more costly than retaining existing ones. Early detection of potential churners enables targeted retention strategies, enhancing user experience, increasing loyalty, and mitigating revenue loss. To tackle this problem, businesses were first s egmented u sing u nsupervised l earning t echniques, specifically Gaussian Mixture Models (GMM) and K-Means, based on transaction volume and average amounts. GMM outperformed K-Means and was selected for clustering. Following segmentation, transactional data were analyzed across card types and network levels. Due to the dataset's class imbalance - with significantly fewer churners - unsupervised anomaly detection methods were used: One-Class support-vector machine, Isolation Forest, and Local Outlier Factor (LOF). LOF showed the best results, achieving PR-AUC scores of 0.99 and 0.96 for the Micro and Pequeño segments, with recall values of 0.99 and 0.95. For Masivo, Grande, and Mediano segments, lower PR-AUCs (0.71, 0.52, and 0.53) were obtained due to higher false positive rates. Still, their absolute number was small, and they can serve as early warning indicators for proactive retention efforts.
AB - This work addresses the early identification of businesses at risk of ceasing or limiting their use of point-of-sale (POS) services, resulting in decreased transaction volumes - a key indicator of customer churn. In the highly competitive POS market, customer retention is essential, as acquiring new clients is typically more costly than retaining existing ones. Early detection of potential churners enables targeted retention strategies, enhancing user experience, increasing loyalty, and mitigating revenue loss. To tackle this problem, businesses were first s egmented u sing u nsupervised l earning t echniques, specifically Gaussian Mixture Models (GMM) and K-Means, based on transaction volume and average amounts. GMM outperformed K-Means and was selected for clustering. Following segmentation, transactional data were analyzed across card types and network levels. Due to the dataset's class imbalance - with significantly fewer churners - unsupervised anomaly detection methods were used: One-Class support-vector machine, Isolation Forest, and Local Outlier Factor (LOF). LOF showed the best results, achieving PR-AUC scores of 0.99 and 0.96 for the Micro and Pequeño segments, with recall values of 0.99 and 0.95. For Masivo, Grande, and Mediano segments, lower PR-AUCs (0.71, 0.52, and 0.53) were obtained due to higher false positive rates. Still, their absolute number was small, and they can serve as early warning indicators for proactive retention efforts.
KW - Anomaly Detection
KW - Churn Prediction
KW - Gaussian Mixture Models (GMM)
KW - Isolation Forest
KW - Local Outlier Factor (LOF)
KW - One-Class SVM
KW - POS Payment Networks
UR - https://www.scopus.com/pages/publications/105032518023
U2 - 10.1109/ETCM67548.2025.11304420
DO - 10.1109/ETCM67548.2025.11304420
M3 - Contribución a la conferencia
AN - SCOPUS:105032518023
T3 - ETCM 2025 - 9th Ecuador Technical Chapters Meeting
BT - ETCM 2025 - 9th Ecuador Technical Chapters Meeting
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 9th Ecuador Technical Chapters Meeting, ETCM 2025
Y2 - 21 October 2025 through 24 October 2025
ER -