How Do Machine Learning and Non-traditional Data Affect Credit Scoring?

How Do Machine Learning and Non-traditional Data Affect Credit Scoring?
Author :
Publisher :
Total Pages : 20
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ISBN-10 : OCLC:1134401211
ISBN-13 :
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Book Synopsis How Do Machine Learning and Non-traditional Data Affect Credit Scoring? by : Leonardo Gambacorta

Download or read book How Do Machine Learning and Non-traditional Data Affect Credit Scoring? written by Leonardo Gambacorta and published by . This book was released on 2019 with total page 20 pages. Available in PDF, EPUB and Kindle. Book excerpt: This paper compares the predictive power of credit scoring models based on machine learning techniques with that of traditional loss and default models. Using proprietary transaction-level data from a leading fintech company in China for the period between May and September 2017, we test the performance of different models to predict losses and defaults both in normal times and when the economy is subject to a shock. In particular, we analyse the case of an (exogenous) change in regulation policy on shadow banking in China that caused lending to decline and credit conditions to deteriorate. We find that the model based on machine learning and non-traditional data is better able to predict losses and defaults than traditional models in the presence of a negative shock to the aggregate credit supply. One possible reason for this is that machine learning can better mine the non-linear relationship between variables in a period of stress. Finally, the comparative advantage of the model that uses the fintech credit scoring technique based on machine learning and big data tends to decline for borrowers with a longer credit history.


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