Publication: New approach for predictive churn analysis in Telecom
Abstract
In this article, we propose a new approach for the churn analysis. Our target sector is Telecom
industry, because most of the companies in the sector want to know which of the customers want to cancel the
contract in the near future. Thus, they can propose new offers to the customers to convince them to continue
using services from same company. For this purpose, churn analysis is getting more important. We analyze
well-known machine learning methods that are logistic regression, Naïve Bayes, support vector machines,
artificial neural networks and propose new prediction method. Our analysis consist of two parts which are
success of predictions and speed measurements. Affect of the dimension reduction is also measured for the
analysis. In addition, we test our new method with a second dataset. Artificial neural networks is the most
successful as we expected but our new approach is better than artificial neural networks when we try it with
data set 2. For both data sets, new method gives the better result than logistic regression and Naïve Bayes.
Description
Keywords
Yapay Sinir Ağları, Kayıp Analizi, Lojistik Regresyon, Destek Vektörü, Artificial Neural Networks, Churn Analysis, Logistic Regression, Support Vector, Naïve Bayes