Churn management is one of the key issues handled by mobile telecommunication operators. Data mining techniques can help in the prediction of churn behavior of customers. Various supervised learning techniques have been used to study customer churn. However, research on the use of unsupervised learning techniques for prediction of churn is limited. In this article, we use two-stage hybrid models consisting of unsupervised clustering techniques and decision trees with boosting on two different data sets and evaluate the models in terms of top decile lift. We examine two different approaches for hybridization of the models for utilizing the results of clustering based on various attributes related to services usage and revenue contribution of...
Customer churn prediction models aim to indicate the customers with the highest propensity to attrit...
Customers are prominent resources in every business for its sustainability. Therefore, predicting cu...
In the telecommunications industry, the possibility of a customer leaving a product or service, kno...
In this paper, we use two-stage hybrid models consisting of unsupervised clustering techniques and d...
The expenses for attracting new customers are much higher compared to the ones needed to maintain ol...
As markets have become increasingly saturated, companies have acknowledged that their business strat...
Customer churn is the focal concern of most companies which are active in industries with low swit...
Telecommunication sector generates a huge amount of data due to increasing number of subscribers, ra...
For telecommunication businesses it is important to retain as many customers as possible. For this p...
In recent years, the telecom market has been very competitive. The cost of retaining existing teleco...
The telecommunication sector has been developed rapidly and with large amounts of data obtained as a...
In the telco industry, attracting new customers is no longer a good strategy since the cost of retai...
These days telecommunication sector has grown significantly due to the use of smart technologies, an...
The rapid growth of the market in every sector is leading to a bigger subscriber base for service pr...
In 2010, the penetration of the Icelandic mobile telephony market has reached about 120%. Competitio...
Customer churn prediction models aim to indicate the customers with the highest propensity to attrit...
Customers are prominent resources in every business for its sustainability. Therefore, predicting cu...
In the telecommunications industry, the possibility of a customer leaving a product or service, kno...
In this paper, we use two-stage hybrid models consisting of unsupervised clustering techniques and d...
The expenses for attracting new customers are much higher compared to the ones needed to maintain ol...
As markets have become increasingly saturated, companies have acknowledged that their business strat...
Customer churn is the focal concern of most companies which are active in industries with low swit...
Telecommunication sector generates a huge amount of data due to increasing number of subscribers, ra...
For telecommunication businesses it is important to retain as many customers as possible. For this p...
In recent years, the telecom market has been very competitive. The cost of retaining existing teleco...
The telecommunication sector has been developed rapidly and with large amounts of data obtained as a...
In the telco industry, attracting new customers is no longer a good strategy since the cost of retai...
These days telecommunication sector has grown significantly due to the use of smart technologies, an...
The rapid growth of the market in every sector is leading to a bigger subscriber base for service pr...
In 2010, the penetration of the Icelandic mobile telephony market has reached about 120%. Competitio...
Customer churn prediction models aim to indicate the customers with the highest propensity to attrit...
Customers are prominent resources in every business for its sustainability. Therefore, predicting cu...
In the telecommunications industry, the possibility of a customer leaving a product or service, kno...