2019 International Workshop on Big Data and Information Security (IWBIS) 2019
DOI: 10.1109/iwbis.2019.8935884
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Customer Churn Analysis and Prediction Using Data Mining Models in Banking Industry

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Cited by 31 publications
(14 citation statements)
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“…Datamining provides classi cation techniques that can be applied for churn prediction problem. A study on applying ve different classi cation techniques on a private Indonesia banking dataset was performed and proved that SVM performs well in prediction of churners [7].Though commercial banks take measures to analyse the customer information in their records, it is found that prevention of churning is challenging. An improved Fuzzy C means clustering algorithm has been proposed to understand the customer behaviour which in turn helps in identi cation of churners [8].…”
Section: Related Workmentioning
confidence: 99%
“…Datamining provides classi cation techniques that can be applied for churn prediction problem. A study on applying ve different classi cation techniques on a private Indonesia banking dataset was performed and proved that SVM performs well in prediction of churners [7].Though commercial banks take measures to analyse the customer information in their records, it is found that prevention of churning is challenging. An improved Fuzzy C means clustering algorithm has been proposed to understand the customer behaviour which in turn helps in identi cation of churners [8].…”
Section: Related Workmentioning
confidence: 99%
“…Churn customer forecasting is an activity performed to predict whether a customer will leave the company. In addition, this was inspired by the fact that there are about 1.5 million bank churn customers annually, which is increasing each year [15]. Indeed, if it is difficult to win a customer, it is very easy on the other hand to lose him.…”
Section: Introductionmentioning
confidence: 99%
“…The most commonly used metrics include accuracy first, then specificity, sensitivity, precision, and recall which are often compromised by the f1 score, and finally, the AUC (area under the curve). Only three studies have balanced the data [15,30,34] and four others explained their models by the importance of features [29,31,35,38] but none used Shapley values or an approach involving both data balancing and model explanation.…”
mentioning
confidence: 99%
“…Given that customers are the most valuable assets that have a direct impact on the revenue of the banking industry, customer churn is a source of major concern for service organizations [2]. It is therefore an important basic requirement that banks have good knowledge of customers' data, find factors that increase customer churn and take the necessary actions to reduce it [2,3]. The advancement of technology in the last few decades has made it possible for banks and many other service organizations to collect and store data about their customers and classify them into either the churner or non-churner categories.…”
Section: Introductionmentioning
confidence: 99%