The banking industry is very important for an economic cycle of each country and provides some quality of services for us. With the advancement in technology and rapidly increasing of the complexity of the business environment, it has become more competitive than the past so that efficiency analysis in the banking industry attracts much attention in recent years. From many aspects, such analyses at the branch level are more desirable. Evaluating the branch performance with the purpose of eliminating deficiency can be a crucial issue for branch managers to measure branch efficiency. This work not only can lead to a better understanding of bank branch performance but also give further information to enhance managerial decisions to recognize problematic areas. To achieve this purpose, this study presents an integrated approach based on Data Envelopment Analysis (DEA), Clustering algorithms and Polynomial Pattern Classifier for constructing a classifier to identify a class of bank branches. First, the efficiency estimates of individual branches are evaluated by using the DEA approach. Next, when the range and number of classes were identified by experts, the number of clusters is identified by an agglomerative hierarchical clustering algorithm based on some statistical methods. Next, we divide our raw data into k clusters By means of self-organizing map (SOM) neural networks. Finally, all clusters are fed into the reduced multivariate polynomial model to predict the classes of data.
[1]
Mohamed S. Kamel,et al.
Modular neural networks: a survey.
,
1999,
International journal of neural systems.
[2]
Ethem Alpaydin,et al.
Introduction to machine learning
,
2004,
Adaptive computation and machine learning.
[3]
R. Suganya,et al.
Data Mining Concepts and Techniques
,
2010
.
[4]
Fotios Pasiouras,et al.
Assessing Bank Efficiency and Performance with Operational Research and Artificial Intelligence Techniques: A Survey
,
2009,
Eur. J. Oper. Res..
[5]
Do Ba Khang,et al.
IT-based banking services: Evaluating operating and profit efficiency at bank branches
,
2009
.
[6]
Kar-Ann Toh,et al.
Benchmarking a reduced multivariate polynomial pattern classifier
,
2004,
IEEE Transactions on Pattern Analysis and Machine Intelligence.
[7]
Joseph C. Paradi,et al.
Identifying managerial groups in a large Canadian bank branch network with a DEA approach
,
2012,
Eur. J. Oper. Res..
[8]
Heekuck Oh,et al.
Neural Networks for Pattern Recognition
,
1993,
Adv. Comput..
[9]
Emmanuel Thanassoulis,et al.
Malmquist-type indices in the presence of negative data: An application to bank branches
,
2010
.
[10]
Jiawei Han,et al.
Data Mining: Concepts and Techniques
,
2000
.
[11]
Tyrone T. Lin,et al.
Application of DEA in analyzing a bank's operating performance
,
2009,
Expert Syst. Appl..