Title of article :
A COMPARATIVE STUDY OF ARTIFICIAL NEURAL NETWORKS AND LOGISTIC REGRESSION FOR CLASSIFICATION OF MARKETING CAMPAIGN RESULTS
Author/Authors :
Koç, Ali Aydın Hacettepe University - Department of Statistics, Turkey , Yeniay, Özgür Hacettepe University - Department of Statistics, Turkey
Abstract :
In this study, we focus on Artificial Neural Networks which are popularly used as universal non-linear inference models and Logistic Regression, which is a well known classification method in the field of statistical learning; there are many classification algorithms in the literature, though. We briefly introduce the techniques and discuss the advantages and disadvantages of these two methods through an application with real-world data set related with direct marketing campaigns of a Portuguese banking institution. The classification goal is to predict if the client will subscribe a term deposit or not after campaigns.
Keywords :
Artificial Neural Networks , Logistic Regression , Classification , Marketing
Journal title :
mathematical and computational applications
Journal title :
mathematical and computational applications