Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk

Credit risk is a critical issue that affects banks and companies on a global scale. Possessing the ability to accurately predict the level of credit risk has the potential to help the lender and borrower. This is achieved by alleviating the number of loans provided to borrowers with poor financial h...

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Main Authors: Khaled Halteh, Kuldeep Kumar, Adrian Gepp
Format: Article
Language:English
Published: MDPI AG 2018-05-01
Series:Risks
Subjects:
Online Access:http://www.mdpi.com/2227-9091/6/2/55
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spelling doaj-8a4c6e33fcb443bb9d1ef370260ee8372020-11-24T22:53:43ZengMDPI AGRisks2227-90912018-05-01625510.3390/risks6020055risks6020055Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit RiskKhaled Halteh0Kuldeep Kumar1Adrian Gepp2Bond Business School, Bond University, Gold Coast QLD 4226, AustraliaBond Business School, Bond University, Gold Coast QLD 4226, AustraliaBond Business School, Bond University, Gold Coast QLD 4226, AustraliaCredit risk is a critical issue that affects banks and companies on a global scale. Possessing the ability to accurately predict the level of credit risk has the potential to help the lender and borrower. This is achieved by alleviating the number of loans provided to borrowers with poor financial health, thereby reducing the number of failed businesses, and, in effect, preventing economies from collapsing. This paper uses state-of-the-art stochastic models, namely: Decision trees, random forests, and stochastic gradient boosting to add to the current literature on credit-risk modelling. The Australian mining industry has been selected to test our methodology. Mining in Australia generates around $138 billion annually, making up more than half of the total goods and services. This paper uses publicly-available financial data from 750 risky and not risky Australian mining companies as variables in our models. Our results indicate that stochastic gradient boosting was the superior model at correctly classifying the good and bad credit-rated companies within the mining sector. Our model showed that ‘Property, Plant, & Equipment (PPE) turnover’, ‘Invested Capital Turnover’, and ‘Price over Earnings Ratio (PER)’ were the variables with the best explanatory power pertaining to predicting credit risk in the Australian mining sector.http://www.mdpi.com/2227-9091/6/2/55credit riskpredictionfinancial distressinsolvency risktree-based stochastic modelsmining sector
collection DOAJ
language English
format Article
sources DOAJ
author Khaled Halteh
Kuldeep Kumar
Adrian Gepp
spellingShingle Khaled Halteh
Kuldeep Kumar
Adrian Gepp
Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk
Risks
credit risk
prediction
financial distress
insolvency risk
tree-based stochastic models
mining sector
author_facet Khaled Halteh
Kuldeep Kumar
Adrian Gepp
author_sort Khaled Halteh
title Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk
title_short Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk
title_full Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk
title_fullStr Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk
title_full_unstemmed Using Cutting-Edge Tree-Based Stochastic Models to Predict Credit Risk
title_sort using cutting-edge tree-based stochastic models to predict credit risk
publisher MDPI AG
series Risks
issn 2227-9091
publishDate 2018-05-01
description Credit risk is a critical issue that affects banks and companies on a global scale. Possessing the ability to accurately predict the level of credit risk has the potential to help the lender and borrower. This is achieved by alleviating the number of loans provided to borrowers with poor financial health, thereby reducing the number of failed businesses, and, in effect, preventing economies from collapsing. This paper uses state-of-the-art stochastic models, namely: Decision trees, random forests, and stochastic gradient boosting to add to the current literature on credit-risk modelling. The Australian mining industry has been selected to test our methodology. Mining in Australia generates around $138 billion annually, making up more than half of the total goods and services. This paper uses publicly-available financial data from 750 risky and not risky Australian mining companies as variables in our models. Our results indicate that stochastic gradient boosting was the superior model at correctly classifying the good and bad credit-rated companies within the mining sector. Our model showed that ‘Property, Plant, & Equipment (PPE) turnover’, ‘Invested Capital Turnover’, and ‘Price over Earnings Ratio (PER)’ were the variables with the best explanatory power pertaining to predicting credit risk in the Australian mining sector.
topic credit risk
prediction
financial distress
insolvency risk
tree-based stochastic models
mining sector
url http://www.mdpi.com/2227-9091/6/2/55
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