Author/Authors :
Shafiei Gol Elham نويسنده Department of Computer Engineering, Amirkabir University of Technology, Tehran, Iran Shafiei Gol, Elham , Ahmadi abbas نويسنده Department of Computer Engineering, Amirkabir University of Technology, Tehran, Iran Ahmadi abbas , Mohebi Azadeh نويسنده Iranian Research Institute for Information Science and Technology (IRANDOC), Tehran, Iran Mohebi Azadeh
Abstract :
During recent years, increased competition among banks has caused many
developments in banking experiences and technology, while leading to even more
churning customers due to their desire of having the best services. Therefore, it
is an extremely significant issue for the banks to identify churning customers and
attract them to the banking system again. In order to tackle this issue, this paper
proposes a novel personalized collaborating filtering recommendation approach
joint with the user clustering technology. In the proposed approach, first a hybrid
algorithm based on Particle Swarm Optimization (PSO) and K-mean cluster the
loyal customers. The clusters of loyal customers are used to identify the features
of the churning customers. Finally, the list of appropriate banking services are
recommended for the churning customers based on a collaborative filtering
recommendation system. The recommendation system uses the information of
loyal customers to offer appropriate services for the churning customers. We
applied successfully the proposed intelligent approach to return the churning
customers of an Iranian bank.