THE IMPLEMENTATION OF CREDIT RISK SCORECARD MODEL IMPROVE THE ASSESSMENT OF CREDITWORTHINESS IN A PEER-TO-PEER LENDING COMPANY: CASE STUDY AT PT XYZ
PT XYZ is a new entrant in the financial service industry. The company concerns to serve the <br /> <br /> loan installment with sharia scheme. Currently, the company’s name is getting widely known <br /> <br /> and the number of people applying for loans to the company is...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/30315 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | PT XYZ is a new entrant in the financial service industry. The company concerns to serve the <br />
<br />
loan installment with sharia scheme. Currently, the company’s name is getting widely known <br />
<br />
and the number of people applying for loans to the company is increasing. It is an opportunities <br />
<br />
as well as challenges for the company to serve well the growth of its customers. The company <br />
<br />
faces a problem in term of credit scoring system, where misinterpretation occurred in its system. <br />
<br />
The misinterpretation increases the possibility of opportunity loss and real loss which the <br />
<br />
company might suffer. The managements have no experience in this field, since the company <br />
<br />
is just been established in recent years. The system is evaluated regularly using trial and error <br />
<br />
method. <br />
<br />
Through this research, the author construct the new model for credit scoring system which is <br />
<br />
based on empirical data using the company’s historical data of approved customers. The author <br />
<br />
chooses the Credit Risk Scorecard Model to predict the customer’s creditworthiness assessment <br />
<br />
output. The model selection is based on the facts that the model has been long successfully <br />
<br />
applied in banking and insurance industry, and also supported by the previous research that <br />
<br />
construct the similar model to predict the default risk. <br />
<br />
The model construction results indicates that the model is better than the company’s existing <br />
<br />
scoring system. It is shown from the Pearson correlation, where the new model has Pearson <br />
<br />
correlation value which is higher significant power than the company’s model. Moreover, the <br />
<br />
new model is tested using cross validation test and results the optimum is occurred in the fitted <br />
<br />
cut-off value of 0.235 with the accuracy rate, sensitivity rate, and misclassification rate, <br />
<br />
respectively as for 69.84%, 77.27% and 28.24%. Moreover, the result is almost similar to the <br />
<br />
previous study. <br />
<br />
Keywords: Credit risk management, credit scorecard, creditworthiness, logistic regression, <br />
<br />
p2p lending. |
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