Credit scoring has become an increasingly important area for financial institutions. Self Organizing Maps (SOM) and Support Vector Machine(SVM) are two techniques of data mining which are being used in different applications of businesses. In this paper, descriptive variables in literatures and criteria are being used, which affect the credit of customers in the Iranian financial institutions. We begin with evaluating these variables using Multi Criteria Decision Making (MCDM) approach and take into account the psychological and social viewpoints of the experts. Next both SVM and SOM methods are applied to the credit database and the results are compared. To compare these two methods we use coincidence matrix and the Type I and T...
Summarization: Credit risk rating is an important issue for both financial institutions and companie...
Credit is the main product of savings and loan cooperatives to increase profitability. The greater t...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
Credit scoring has become an increasingly important area for financial institutions. Self Organizing...
The significant growth of consumer credit has resulted in a wide range of statistical and non-statis...
The significant growth of consumer credit has resulted in a wide range of statistical and non-statis...
Credit risk is the most challenging risk to which all the financial institutions are exposed. Credit...
AbstractThis article presents a study on development of credit risk evaluation model using Support V...
Conventional methods to test for credit ratings of financial debt issuers based on current means of ...
This paper presents a comprehensive review of the works done, during the 2000–2012, in the applicati...
Credit scoring is a system or method used by banks or other financial institutions to determine the ...
In the emerging banking sector, credit is an important product. The decision to give or not to give...
Shih-Chen Huang and Min-Yuh Day (2013), "A Comparative Study of Data Mining Techniques for Credit Sc...
Credit scoring is important for credit risk evaluation and monitoring in the accounting and finance ...
[[abstract]]The credit card industry has been growing rapidly recently, and thus huge numbers of con...
Summarization: Credit risk rating is an important issue for both financial institutions and companie...
Credit is the main product of savings and loan cooperatives to increase profitability. The greater t...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
Credit scoring has become an increasingly important area for financial institutions. Self Organizing...
The significant growth of consumer credit has resulted in a wide range of statistical and non-statis...
The significant growth of consumer credit has resulted in a wide range of statistical and non-statis...
Credit risk is the most challenging risk to which all the financial institutions are exposed. Credit...
AbstractThis article presents a study on development of credit risk evaluation model using Support V...
Conventional methods to test for credit ratings of financial debt issuers based on current means of ...
This paper presents a comprehensive review of the works done, during the 2000–2012, in the applicati...
Credit scoring is a system or method used by banks or other financial institutions to determine the ...
In the emerging banking sector, credit is an important product. The decision to give or not to give...
Shih-Chen Huang and Min-Yuh Day (2013), "A Comparative Study of Data Mining Techniques for Credit Sc...
Credit scoring is important for credit risk evaluation and monitoring in the accounting and finance ...
[[abstract]]The credit card industry has been growing rapidly recently, and thus huge numbers of con...
Summarization: Credit risk rating is an important issue for both financial institutions and companie...
Credit is the main product of savings and loan cooperatives to increase profitability. The greater t...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...