Title of article :
A Novel Genetic Algorithm Based Method for Building Accurate and Comprehensible Churn Prediction Models
Author/Authors :
Abbasimehr، H. نويسنده Department of Industrial Engineering, K.N.Toosi University of Technology, Tehran, Iran , , Alizadeh، S. نويسنده Department of Industrial Engineering, K.N.Toosi University of Technology, Tehran, Iran ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Customer churn has become a critical problem for all companies in
particular for those that are operating in service-based industries such
as telecommunication industry. Data mining techniques have been
used for constructing churn prediction models. Past research in churn
prediction context have mainly focused on the accuracy aspect of the
constructed churn models. However, in addition to the accuracy,
comprehensibility aspect should be considered in evaluating a churn
prediction model. Being comprehensible, a model can reveal the main
reasons for customer churn; thereby mangers can use such information
for effective decisions making about marketing actions. In this paper,
we demonstrate the application of a genetic-algorithm (GA) method
for building accurate and comprehensible churn prediction model. The
proposed method, GA-based method uses a wrapper based feature
selection approach for choosing the best feature subset. The key
advantage of this method, is taking into account the comprehensibility
measure (measured as the number of rules extracted from C4.5
decision tree) in evaluating the performance of a candidate model. The
GA-based method is compared to the two filter feature selection
methods including Chi-squared based and Correlation based feature
selection using two telecommunication churn datasets. The results of
experiments indicated that the GA-based method performs better than
the two filter methods in terms of both accuracy and comprehensibility
Journal title :
International Journal of Research in Industrial Engineering
Journal title :
International Journal of Research in Industrial Engineering