Title of article :
Bank efficiency evaluation using a neural network-DEA method
Author/Authors :
Aslani، G. نويسنده Department of Mathematics, Shahed University, P.O.Box: 18151-159, Tehran, Iran , , Momeni-Masuleh، S. H. نويسنده Department of Mathematics, Shahed University, P.O.Box: 18151-159, Tehran, Iran , , Malek، A. نويسنده , , Ghorbani، F. نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2009
Abstract :
In the present time, evaluating the performance of banks is
one of the important subjects for societies and the bank managers who
want to expand the scope of their operation. One of the non-parametric
approaches for evaluating efficiency is data envelopment analysis(DEA).
By a mathematical programming model, DEA provides an estimation of
efficiency surfaces. A major problem faced by DEA is that the frontier
calculated by DEA may be slightly distorted if the data is affected by
statistical noises. In recent years, using the neural networks is a powerful
non-parametric approach for modeling the nonlinear relations in a wide
variety of decision making applications. The radial basis function neural
networks (RBFNN) have proved significantly beneficial in the evaluation
and assessment of complex systems. Clustering is a method by which a
large set of data is grouped into clusters of smaller sets of similar data. In
this paper, we proposed RBFNN with the K-means clustering method for
the efficiency evaluation of a large set of branches for an Iranian bank.
This approach leads to an appropriate classification of branches. The
results are compared with the conventional DEA results. It is shown that,
using the hybrid learning method, the weights of the neural network are
convergent.
Journal title :
Iranian Journal of Mathematical Sciences and Informatics (IJMSI)
Journal title :
Iranian Journal of Mathematical Sciences and Informatics (IJMSI)