Exploiting Time-Varying RFM Measures for Customer Churn Prediction with Deep Neural Networks
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DOI: 10.1007/s10479-023-05259-9
Note: View the original document on HAL open archive server: https://hal.science/hal-04680677v1
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References listed on IDEAS
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Cited by:
- Arno Caigny & Kristof Coussement & Matthijs Meire & Steven Hoornaert, 2025. "Investigating the impact of undersampling and bagging: an empirical investigation for customer attrition modeling," Annals of Operations Research, Springer, vol. 346(3), pages 2401-2421, March.
- Schemm, Jan & Schwarz, Christian & Stickrodt, Marc, "undated". "Proaktives Kundenbindungsmanagement im Werbeartikelhandel: Entwicklung eines Machine-Learning-Modells zur Prognose von Kundenabwanderungen [Proactive Customer Retention Management in Promotional Pr," Duesseldorf Working Papers in Applied Management and Economics 60, Duesseldorf University of Applied Sciences.
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Keywords
Financial services; customer churn; deep learning; panel data; time-varying features; RFM; recurrent neural networks; transformers; attention; GRU; LSTM;All these keywords.
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