TY - GEN
T1 - A Machine Learning Approach for Customer Churn Prediction
AU - Museba, Tinofirei
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - In the dynamic and fiercely competitive landscape of the telecommunications industry, customer churn prediction poses a significant challenge due to the continuously evolving customer behavior and churn factors. Traditional predictive models, while effective to some extent, often fall short in addressing these changing parameters, leading to suboptimal accuracy in predicting customer churn. Addressing this limitation, this paper presents an innovative approach named the Evolving Ensemble Predictor (EEP) for churn analysis. This approach treats churn prediction as an evolving, rather than a static problem. EEP integrates machine learning models - neural networks, random forest, XGBoost, and KNN - known for their adaptability and proficiency in dealing with drifting variables over time. The strength of this method lies in its ensemble learning capability, employing a weighted average technique. This allows for harnessing the unique strengths and diversity of each incorporated model, thus resulting in a robust and adaptive predictive system. The performance of the EEP, in terms of accuracy and computational efficiency, is rigorously evaluated using the Orange Telecom's Churn Dataset available on Kaggle. The results are compared to existing state-of-the-art models, revealing substantial improvements in churn prediction accuracy and computational cost with the EEP approach. In essence, our EEP model offers a significant leap forward in predicting customer churn in a dynamic environment. This research lays a concrete foundation for service providers in the subscription-based industry to devise effective customer retention strategies and maintain a competitive edge in the relentlessly evolving market.
AB - In the dynamic and fiercely competitive landscape of the telecommunications industry, customer churn prediction poses a significant challenge due to the continuously evolving customer behavior and churn factors. Traditional predictive models, while effective to some extent, often fall short in addressing these changing parameters, leading to suboptimal accuracy in predicting customer churn. Addressing this limitation, this paper presents an innovative approach named the Evolving Ensemble Predictor (EEP) for churn analysis. This approach treats churn prediction as an evolving, rather than a static problem. EEP integrates machine learning models - neural networks, random forest, XGBoost, and KNN - known for their adaptability and proficiency in dealing with drifting variables over time. The strength of this method lies in its ensemble learning capability, employing a weighted average technique. This allows for harnessing the unique strengths and diversity of each incorporated model, thus resulting in a robust and adaptive predictive system. The performance of the EEP, in terms of accuracy and computational efficiency, is rigorously evaluated using the Orange Telecom's Churn Dataset available on Kaggle. The results are compared to existing state-of-the-art models, revealing substantial improvements in churn prediction accuracy and computational cost with the EEP approach. In essence, our EEP model offers a significant leap forward in predicting customer churn in a dynamic environment. This research lays a concrete foundation for service providers in the subscription-based industry to devise effective customer retention strategies and maintain a competitive edge in the relentlessly evolving market.
KW - customer churn machine learning
KW - ensemble learning
KW - evolving ensemble predictor
KW - telecommuinications
UR - http://www.scopus.com/inward/record.url?scp=85218347352&partnerID=8YFLogxK
U2 - 10.1109/IMITEC60221.2024.10851064
DO - 10.1109/IMITEC60221.2024.10851064
M3 - Conference contribution
AN - SCOPUS:85218347352
T3 - Proceedings of 2024 4th International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2024
SP - 400
EP - 406
BT - Proceedings of 2024 4th International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2024
A2 - Zuva, Tranos
A2 - Brown, Andrew
A2 - Rikhotso, Musa
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 4th International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2024
Y2 - 27 November 2024 through 29 November 2024
ER -