Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceOne of the most critical challenges facing banking institutions is customer churn, as it dramatically affects a bank’s profits and reputation. Therefore, banks use customer churn forecasting methods when selecting the necessary measures to reduce the impact of this problem. This study applied data mining techniques to predict customer churn in the banking sector using three different classification algorithms, namely: decision tree (J48), random forest (RF), and neural network (MLP) using WEKA. The Results showed that J48 had an overall superior performance over the five performance measures, compared to other algorithms using the 10-fold cross-...
The credit card customer churn rate is the percentage of a bank’s customers that stop using that ban...
This master thesis seeks to explore how machine learning methods can be applied to predict the custo...
The telecommunication industry need a customer churn prediction due to many competitors. The compani...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceOne...
Customer churn is defined as the tendency of customers to cease doing business with a company in a g...
Project Work presented as the partial requirement for obtaining a Master's degree in Information Man...
This study shows how data mining can be used in the banking sector to reduce churn among mortgage cu...
In this era, machines can understand human activities and their meanings. We can utilize this abilit...
A novel approach to analyzing and forecasting client attrition has been put forth. The approach make...
This paper explores churn prediction for savings account customer, based on various statistical & ma...
The aim of this article is to present a case study of usage of one of the data mining methods, neura...
Today, banks have a very important place in the great economic environments of countries. As in ever...
This study aims to assess which supervised statistical learning method; random forest, logistic regr...
This study aims to assess which supervised statistical learning method; random forest, logistic regr...
The socio economic growth of the country is mainly dependent on the services sector. The financial s...
The credit card customer churn rate is the percentage of a bank’s customers that stop using that ban...
This master thesis seeks to explore how machine learning methods can be applied to predict the custo...
The telecommunication industry need a customer churn prediction due to many competitors. The compani...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceOne...
Customer churn is defined as the tendency of customers to cease doing business with a company in a g...
Project Work presented as the partial requirement for obtaining a Master's degree in Information Man...
This study shows how data mining can be used in the banking sector to reduce churn among mortgage cu...
In this era, machines can understand human activities and their meanings. We can utilize this abilit...
A novel approach to analyzing and forecasting client attrition has been put forth. The approach make...
This paper explores churn prediction for savings account customer, based on various statistical & ma...
The aim of this article is to present a case study of usage of one of the data mining methods, neura...
Today, banks have a very important place in the great economic environments of countries. As in ever...
This study aims to assess which supervised statistical learning method; random forest, logistic regr...
This study aims to assess which supervised statistical learning method; random forest, logistic regr...
The socio economic growth of the country is mainly dependent on the services sector. The financial s...
The credit card customer churn rate is the percentage of a bank’s customers that stop using that ban...
This master thesis seeks to explore how machine learning methods can be applied to predict the custo...
The telecommunication industry need a customer churn prediction due to many competitors. The compani...