Customer Churn Prediction in Banking Industry Using K-Means and Support Vector Machine Algorithms

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Date
2020
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International Journal of Multidisciplinary Sciences and Advanced Technology
Abstract
This study proposes a customer churn mining structure based on data mining methods in a banking sector. This study predicts the behavior of customers by using clustering technique to analyze customer’s competence and continuity with the sector using k-means clustering algorithm. The data is clustered into 3 labels, on the basis of the transaction in and outflow. The clustering results were classified using Support Vector Machine (SVM), an Accuracy of 97% was achieved. This study enables the banking administrators to mine the conduct of their customers and may prompt proper strategies as per engaging quality and improve proper conducts of administrator capacities in customer relationship.
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Olaniyi, A. S., Olaolu, A. M., Jimada-Ojuolape, B., & Kayode, S. Y. (2020). Customer churn prediction in banking industry using K-means and support vector machine algorithms. International Journal of Multidisciplinary Sciences and Advanced Technology, 1(1), 48-54.