Using data coverage analysis to compare the performance of banks admitted to the stock exchange
Subject Areas : Financial ManagementAkbar Valizadeh Oghani 1 , manouchehr rahmati guruli 2 , akbar golmahammadpor 3 , abbas vahedi 4
1 - Department of Management, Sarab branch, Islamic Azad University, Sarab, Iran
2 - Assistant Professor, Department of Accounting, Aras Branch, Islamic Azad University, Hadishehr, Iran
3 - Instructor, Management Department, Aras Branch, Islamic Azad University, Hadishehr, Iran
4 - Master of industrial management
Keywords: Data coverage analysis, Performance, Banks admitted to the stock exchange,
Abstract :
The purpose of the present research was to use data coverage analysis to compare the performance of banks admitted to the stock exchange. This research is practical in terms of purpose and survey in terms of data collection method. The statistical population of the research included all the banks admitted to the stock exchange, which was 19 cases according to the limitations in question. With the help of data envelopment analysis model and through Gams software, the relative efficiency of banks is calculated. Finally, by using Andson-Peterson model, efficient and ineffective banks were calculated and compared. The results of the DEA technique are as follows: The results of the first question of the research were about how to evaluate the performance of banks that are members of the stock exchange. The results show that on average in the last two years more than 80% of banks are efficient and a specific number of them were inefficient. It can be concluded that the country's banking industry has been evaluated relatively efficiently in the last two years. The results of the second question of the research were to compare the performance of banks that are members of the stock exchange. The results show that, among the member banks of the Tehran Stock Exchange in the last year, Bank D ranked first in terms of relative efficiency, Middle East Bank, Qarz Al-Hasneh Resalat Bank, and Tourism Bank respectively have a higher relative efficiency score than other banks. have been.
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