Title of article :
Identifying criteria which improve efficiency in an Iranian development bank using artificial neural networks
Author/Authors :
Mohammadi, Negar Department of Industrial Engineering - College of Engineering - Alborz Campus - University of Tehran - Tehran, Iran , Bozorgi-Amiri, Ali School of Industrial Engineering - College of Engineering - University of Tehran - Tehran, Iran
Abstract :
Banks, in general, have a direct impact on the macro-economy of all countries.
Recognizing the criteria which have momentous influence on bank branches’
efficiency is the main purpose of this research. An artificial neural network
approach, one of the most applicable data mining techniques, is adopted to identify
the criteria that influence the branches' efficiency the most (according to the result
of efficiency evaluation base on MCDM). Then, the optimal group of input criteria
is determined in order to achieve the most efficient performance. Branches that
enjoy more appropriate inputs would have better conditions to increase their
efficiency, possess more acceptable position and gain more adequate results. In this
paper, utilizing data mining science, we have endeavored to suggest a suitable
method in recognizing the most significant inputs with positive impact on
enhancing efficiency of branches by the incorporation of relatively neglected
indicators which fit the particular conditions of Iranian banks. The strength of this
article compared to other related researches is that it provides a mechanism
according to which senior managers in the banking sector will be able to identify
the most important indicators and implement the best conditions to achieve the
highest level of efficiency in the collection.
Keywords :
Bank , efficiency , criteria , data mining , artificial neural network
Journal title :
Journal of Industrial and Systems Engineering (JISE)