Title of article :
Using DEA for Classification in Credit Scoring
Author/Authors :
Golshani ، Hoda Department of Mathematics - Islamic Azad University, shahr-e-rey Branch , Bagherzadeh Valami ، Hadi Department of Mathematics - Islamic Azad University, shahr-e-rey Branch , Davoodi ، Alireza Department of Mathematics - Islamic Azad University, Neyshabur Branch
From page :
997
To page :
1005
Abstract :
Credit scoring is a kind of binary classification problem that contains important information for manager to make a decision in particularly in banking authorities. Obtained scores provide a practical credit decision for a loan officer to classify clients to reject or accept for payment loan. For this sake, in this paper a data envelopment analysis discriminant analysis (DEADA) approach is used for reclassifying  client  to reject or accept class for case of real data sets of  an Iranian bank branch.  For this reason, two DEA models are solved. Also, the reject and accept frontiers and overlapping region among two frontiers are obtained.  Then a goal programming problem is solved for finding coefficients of the discriminant hyperplane. The results are obtained from the samples are kept from the main dataset, clarify that the classified hyper-plane obtained from the used method provides an almost profitable classification for payment loan.
Keywords :
Data Envelopment Analysis , Classification , Credit Scoring
Journal title :
international journal of data envelopment analysis
Record number :
2502795
Link To Document :
بازگشت