Details
Application of AI in Credit Scoring Modeling
BestMasters
CHF 100.50 |
|
Verlag: | Gabler |
Format: | |
Veröffentl.: | 07.12.2022 |
ISBN/EAN: | 9783658401801 |
Sprache: | englisch |
Dieses eBook enthält ein Wasserzeichen.
Beschreibungen
The scope of this study is to investigate the capability of AI methods to accurately detect and predict credit risks based on retail borrowers' features. The comparison of logistic regression, decision tree, and random forest showed that machine learning methods are able to predict credit defaults of individuals more accurately than the logit model. Furthermore, it was demonstrated how random forest and decision tree models were more sensitive in detecting default borrowers.
Introduction.- Theoretical Concepts of Credit Scoring.- Credit Scoring Methodologies.- Empirical Analysis.- Conclusion.- References.
MA Bohdan Popovych is a data scientist and a researcher in quantitative finance. The main scientific focus of the author is application of advanced analytics and artificial intelligence in finance and economics.
The scope of this study is to investigate the capability of AI methods to accurately detect and predict credit risks based on retail borrowers' features. The comparison of logistic regression, decision tree, and random forest showed that machine learning methods are able to predict credit defaults of individuals more accurately than the logit model. Furthermore, it was demonstrated how random forest and decision tree models were more sensitive in detecting default borrowers.<div><br></div><div><b>About the author </b></div><div><b>MA Bohdan Popovych</b> is a data scientist and a researcher in quantitative finance. The main scientific focus of the author is application of advanced analytics and artificial intelligence in finance and economics.</div><div><br></div>
Diese Produkte könnten Sie auch interessieren:
A Sea Change: The Exclusive Economic Zone and Governance Institutions for Living Marine Resources
von: Syma A. Ebbin, Alf H. Hoel, Are Sydnes
CHF 118.00