Title of article :
Matrix Sequential Hybrid Credit Scorecard Based on Logistic Regression and Clustering
Author/Authors :
Sadatrasoul ، Mahdi - Kharazmi University
Pages :
21
From page :
91
To page :
111
Abstract :
The Basel II Accord pointed out benefits of credit risk management through internal models to estimate Probability of Default (PD). Banks use default predictions to estimate the loan applicants’ PD. However, in practice, PD is not useful and banks applied credit scorecards for their decision making process. Also the competitive pressures in lending industry forced banks to use profit scorecards, which show the profitability of customers. Applying these scorecards together makes the loan decision making process for banks more confusing. This paper has an obvious and clean solution for facilitating the confusion of loan decision making process by combining the credit and profit scorecards through introducing a matrix sequential hybrid credit scorecard. The applicability of the introduced matrix sequential hybrid scorecard results are shown using data from an Iranian bank.
Keywords :
Credit scoring , banking industry , credit scorecard , profit scoring , matrix scorecard
Journal title :
Iranian Journal of Management Studies
Serial Year :
2018
Journal title :
Iranian Journal of Management Studies
Record number :
2463016
Link To Document :
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