Customer churn prediction (CCP) refers to detecting which customers are likely to cancel the services provided by a service provider, for example, internet services. The class imbalance problem (CIP) in machine learning occurs when there is a huge difference in the samples of the positive class compared to the negative class. It is one of the major obstacles in CCP as it deteriorates performance in the classification process. Utilizing data sampling techniques (DSTs) helps to resolve the CIP to some extent. Methods: In this paper, we review the effect of using DSTs on algorithmic fairness, i.e., to investigate whether the results pose any discrimination between male and female groups and compare the results before and after using DSTs. Thr...
In this paper, bagging and boosting techniques are proposed as performing tools for churn prediction...
Abstract Churn rate refers to the proportion of contractual customers who leave a sup-plier during a...
The telecommunication industry need a customer churn prediction due to many competitors. The compani...
Customer churn is often a rare event in service industries, but of great interest and great value. U...
Decision-making systems (DMS) have been transformed from human-based into machine-based decision-mak...
Class imbalance presents significant challenges to customer churn prediction. Many data-level sampli...
Customer retention is a major issue for various service-based organizations particularly telecom ind...
The focus of this project is in predicting customer churn. It is essential to consider and handle th...
Class imbalance brings significant challenges to customer churn prediction. Many solutions have been...
Abstract—Class imbalance is a common problem in real world applications and it affects significantly...
These days, telecommunications is very much needed in all areas of life. This condition has made the...
Customer churn has become a significant problem and also a challenge for Telecommunication company s...
In this paper, bagging and boosting techniques are proposed as performing tools for churn prediction...
© The Author(s), under exclusive licence to Springer Nature Singapore Pte Ltd 2021. This is the acce...
Customer churn prediction models aim to indicate the customers with the highest propensity to attrit...
In this paper, bagging and boosting techniques are proposed as performing tools for churn prediction...
Abstract Churn rate refers to the proportion of contractual customers who leave a sup-plier during a...
The telecommunication industry need a customer churn prediction due to many competitors. The compani...
Customer churn is often a rare event in service industries, but of great interest and great value. U...
Decision-making systems (DMS) have been transformed from human-based into machine-based decision-mak...
Class imbalance presents significant challenges to customer churn prediction. Many data-level sampli...
Customer retention is a major issue for various service-based organizations particularly telecom ind...
The focus of this project is in predicting customer churn. It is essential to consider and handle th...
Class imbalance brings significant challenges to customer churn prediction. Many solutions have been...
Abstract—Class imbalance is a common problem in real world applications and it affects significantly...
These days, telecommunications is very much needed in all areas of life. This condition has made the...
Customer churn has become a significant problem and also a challenge for Telecommunication company s...
In this paper, bagging and boosting techniques are proposed as performing tools for churn prediction...
© The Author(s), under exclusive licence to Springer Nature Singapore Pte Ltd 2021. This is the acce...
Customer churn prediction models aim to indicate the customers with the highest propensity to attrit...
In this paper, bagging and boosting techniques are proposed as performing tools for churn prediction...
Abstract Churn rate refers to the proportion of contractual customers who leave a sup-plier during a...
The telecommunication industry need a customer churn prediction due to many competitors. The compani...