Machine Learning to Develop Credit Card Customer Churn Prediction
Özet
The credit card customer churn rate is the percentage of a bank’s customers that stop using
that bank’s services. Hence, developing a prediction model to predict the expected status for the
customers will generate an early alert for banks to change the service for that customer or to offer
them new services. This paper aims to develop credit card customer churn prediction by using
a feature-selection method and five machine learning models. To select the independent variables,
three models were used, including selection of all independent variables, two-step clustering and
k-nearest neighbor, and feature selection. In addition, five machine learning prediction models were
selected, including the Bayesian network, the C5 tree, the chi-square automatic interaction detection
(CHAID) tree, the classification and regression (CR) tree, and a neural network. The analysis showed
that all the machine learning models could predict the credit card customer churn model. In addition,
the results showed that the C5 tree machine learning model performed the best in comparison
with the three developed models. The results indicated that the top three variables needed in the
development of the C5 tree customer churn prediction model were the total transaction count, the
total revolving balance on the credit card, and the change in the transaction count. Finally, the results
revealed that merging the multi-categorical variables into one variable improved the performance of
the prediction models.
Cilt
17Sayı
4Bağlantı
https://hdl.handle.net/11363/6250Koleksiyonlar
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