Solving the multi-criteria ranking problem of the branches of Sepah bank of Fars province with interval data by EDAS approach
Subject Areas : تحقیق در عملیاتHamid Soleimanpour 1 , Sadegh Niroomand 2 , Zadollah Fathi 3 , Ali Mahmoodirad 4
1 - Department of Industrial Management, Faculty of Management, Central Tehran Branch, Islamic Azad University, Tehran, Iran
2 -
3 - Department of Industrial Management, Faculty of Management, Central Tehran Branch, Islamic Azad University, Tehran
4 - Department of Mathematics, Babol Branch, Islamic Azad University, Amol, Iran
Keywords: شعب بانک, روش ایداس بازه ای, تصمیم گیری چند معیاره, رتبه بندی,
Abstract :
The aim of this paper is to evaluate and rank the branches of a financial institute (bank) in existence of multiple criteria. For this aim, the branches of Sepah bank in Fars province of Iran are considered. A multi-criteria decision making framework is used to perform the aimed ranking. In this framework, the suitable criteria are selected. Then the performance of each branch in each criterion in last years as an interval value is considered. The criteria are weighted by a mixed approach where the experts opinions and also interval Shannon entropy approach is used. Finally an interval EDAS multi-criteria approach is proposed to perform the aimed ranking. According to the proposed approach the weights of the criteria and also the ranking of the branches have been obtained. Furthermore, according the performed sensitivity analysis by changing the coefficients of the mixed approach, different values for the weights of the criteria are obtained where also these different weight values affect the obtained ranking and different rankings are obtained.
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