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Ensemble approach and enhanced features for precise Bank Churn prediction analysis
Conference proceeding   Peer reviewed

Ensemble approach and enhanced features for precise Bank Churn prediction analysis

Lare Samuel Adeola, Celestine Iwendi and Aamir Mazhar Abbas
Proceedings of Second International Conference on Emerging Trends in IoT and Computing Technologies - 2023 (ICEICT-2023), pp.481-484
International Conference on Emerging Trends in IoT and Computing Technologies 2023 (Lucknow, India, 12/01/2024–13/01/2024)
29/08/2024

Abstract

Ensemble Model Churn Analysis Feature Engineering Predictive Modelling Machine Learning
Numerous studies and research work has been undertaken in the area of creating predictive models for studying Bank Churn. In these studies, the end goal was to create a high accuracy predictive model; while this is commendable, this research focuses on creating an architecture for a predictive model by aggregating the power of various predictive models. The architecture and model proposed in this paper achieved an accuracy of 91% in the test data (35% of the original data set), and an AUC of 96% - confirming the generalized nature of the model. Also, various feature extrapolation techniques were introduced which provide valuable insights to the banking sector.
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