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International Journal of Academic Research in Accounting, Finance and Management Sciences

Open Access Journal

ISSN: 2225-8329

Evaluation of the Credit Risk with Statistical Analysis

Asrin Karimi

http://dx.doi.org/10.6007/IJARAFMS/v4-i3/1184

Open access

The purpose of this study is to identify important variables that influence on credit risk. Statistical analysis was used. In order to achieve the purpose of this research, a frame of references has been constructed based on a wide literature review. The calculations have been done by using SPSS 18 software. Number of samples was 90 and 5 dependent variables. The achieved results indicate the relation between credit risk and independent variables were considered. The major contribution of this paper is specifying the most important determinants for rating of customers in Iran’s banking sector.

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In-Text Citation: (Karimi, 2014)
To Cite this Article: Karimi, A. (2014). Evaluation of the Credit Risk with Statistical Analysis. International Journal of Academic Research in Accounting Finance and Management Sciences, 4(3), 281–288.