Credit Risk Analysis Using Machine and Deep Learning Models

Due to the advanced technology associated with Big Data, data availability and computing power, most banks or lending institutions are renewing their business models. Credit risk predictions, monitoring, model reliability and effective loan processing are key to decision-making and transparency. In...

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Bibliographic Details
Main Authors: Peter Martey Addo, Dominique Guegan, Bertrand Hassani
Format: Article
Language:English
Published: MDPI AG 2018-04-01
Series:Risks
Subjects:
Online Access:http://www.mdpi.com/2227-9091/6/2/38
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spelling doaj-af904533937948f8b29e71b70fd9bea92020-11-24T22:31:30ZengMDPI AGRisks2227-90912018-04-01623810.3390/risks6020038risks6020038Credit Risk Analysis Using Machine and Deep Learning ModelsPeter Martey Addo0Dominique Guegan1Bertrand Hassani2Direction du Numérique, AFD—Agence Française de Développement, Paris 75012, FranceLaboratory of Excellence for Financial Regulation (LabEx ReFi), Paris 75011, FranceLaboratory of Excellence for Financial Regulation (LabEx ReFi), Paris 75011, FranceDue to the advanced technology associated with Big Data, data availability and computing power, most banks or lending institutions are renewing their business models. Credit risk predictions, monitoring, model reliability and effective loan processing are key to decision-making and transparency. In this work, we build binary classifiers based on machine and deep learning models on real data in predicting loan default probability. The top 10 important features from these models are selected and then used in the modeling process to test the stability of binary classifiers by comparing their performance on separate data. We observe that the tree-based models are more stable than the models based on multilayer artificial neural networks. This opens several questions relative to the intensive use of deep learning systems in enterprises.http://www.mdpi.com/2227-9091/6/2/38credit riskfinancial regulationdata scienceBig Datadeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Peter Martey Addo
Dominique Guegan
Bertrand Hassani
spellingShingle Peter Martey Addo
Dominique Guegan
Bertrand Hassani
Credit Risk Analysis Using Machine and Deep Learning Models
Risks
credit risk
financial regulation
data science
Big Data
deep learning
author_facet Peter Martey Addo
Dominique Guegan
Bertrand Hassani
author_sort Peter Martey Addo
title Credit Risk Analysis Using Machine and Deep Learning Models
title_short Credit Risk Analysis Using Machine and Deep Learning Models
title_full Credit Risk Analysis Using Machine and Deep Learning Models
title_fullStr Credit Risk Analysis Using Machine and Deep Learning Models
title_full_unstemmed Credit Risk Analysis Using Machine and Deep Learning Models
title_sort credit risk analysis using machine and deep learning models
publisher MDPI AG
series Risks
issn 2227-9091
publishDate 2018-04-01
description Due to the advanced technology associated with Big Data, data availability and computing power, most banks or lending institutions are renewing their business models. Credit risk predictions, monitoring, model reliability and effective loan processing are key to decision-making and transparency. In this work, we build binary classifiers based on machine and deep learning models on real data in predicting loan default probability. The top 10 important features from these models are selected and then used in the modeling process to test the stability of binary classifiers by comparing their performance on separate data. We observe that the tree-based models are more stable than the models based on multilayer artificial neural networks. This opens several questions relative to the intensive use of deep learning systems in enterprises.
topic credit risk
financial regulation
data science
Big Data
deep learning
url http://www.mdpi.com/2227-9091/6/2/38
work_keys_str_mv AT petermarteyaddo creditriskanalysisusingmachineanddeeplearningmodels
AT dominiqueguegan creditriskanalysisusingmachineanddeeplearningmodels
AT bertrandhassani creditriskanalysisusingmachineanddeeplearningmodels
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