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Comparing Oversampling Techniques to Handle the Class Imbalance Problem: A Customer Churn Prediction Case Study
Journal article   Open access  Peer reviewed

Comparing Oversampling Techniques to Handle the Class Imbalance Problem: A Customer Churn Prediction Case Study

Adnan Amin, Sajid Anwar, Awais Adnan, Muhammad Nawaz, Newton Howard, Junaid Qadir, Ahmad Hawalah and Amir Hussain
IEEE access, Vol.4, pp.7940-7957
2016

Abstract

ADASYN class imbalance customer churn Customer profiles Customer retention Customer satisfaction Genetic algorithms Learning systems mega trend diffusion function mRMR. ICOTE MWMOTE Prediction algorithms Predictive models rough set Sampling methods SMOTE TRkNN
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https://doi.org/10.1109/ACCESS.2016.2619719View
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