Prediction of financial strength ratings using machine learning and conventional techniques
Prediction of financial strength ratings using machine learning and conventional techniques
Financial strength ratings (FSRs) have become more significant particularly since the recent financial crisis of 2007-09 where rating agencies failed to forecast defaults and the downgrade of some banks. The aim of this paper is to predict Capital Intelligence banks’ financial strength ratings (FSRs) group membership using machine learning and conventional techniques. Here we use five different statistical techniques, namely CHAID, CART, multilayer-perceptron neural networks, discriminant analysis and logistic regression. We also use three different evaluation criteria namely average correct classification rate, misclassification cost and gains charts. Our data is collected from Bankscope database for the Middle Eastern commercial banks by reference to the first decade in the 21st Century. Our findings show that when predicting bank FSRs during the period 2007-2009, discriminant analysis is surprisingly superior to all other techniques used in this paper. When only machine learning techniques are used, CHAID outperform other techniques. In addition, our findings highlight that when a random sample is used to predict bank FSRs, CART outperform all other techniques. Our evaluation criteria have confirmed our findings and both CART and discriminant analysis are superior to other techniques in predicting bank FSRs. This has implications for Middle Eastern banks as we would suggest that improving their bank FSR can improve their presence in the market.
FSR group membership, Capital Intelligence, Machine learning techniques, Conventional techniques
194-211
Abdou, Hussein A.
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Abdallah, Wael M.
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Mulkeen, James
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Ntim, Collins
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Wang, Yan
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Abdou, Hussein A.
c5679c57-2de9-452f-8434-1a0452563e0a
Abdallah, Wael M.
1d7c6e63-9b89-48f3-a561-35770f006597
Mulkeen, James
a859d7bd-860b-4f42-8b37-6950b8a3f8d4
Ntim, Collins
1f344edc-8005-4e96-8972-d56c4dade46b
Wang, Yan
2240068a-12e7-4ebb-9f2b-e1236d83ea5e
Abdou, Hussein A., Abdallah, Wael M., Mulkeen, James, Ntim, Collins and Wang, Yan
(2017)
Prediction of financial strength ratings using machine learning and conventional techniques.
Investment Management and Financial Innovations, 14 (4), .
(doi:10.21511/imfi.14(4).2017.16).
Abstract
Financial strength ratings (FSRs) have become more significant particularly since the recent financial crisis of 2007-09 where rating agencies failed to forecast defaults and the downgrade of some banks. The aim of this paper is to predict Capital Intelligence banks’ financial strength ratings (FSRs) group membership using machine learning and conventional techniques. Here we use five different statistical techniques, namely CHAID, CART, multilayer-perceptron neural networks, discriminant analysis and logistic regression. We also use three different evaluation criteria namely average correct classification rate, misclassification cost and gains charts. Our data is collected from Bankscope database for the Middle Eastern commercial banks by reference to the first decade in the 21st Century. Our findings show that when predicting bank FSRs during the period 2007-2009, discriminant analysis is surprisingly superior to all other techniques used in this paper. When only machine learning techniques are used, CHAID outperform other techniques. In addition, our findings highlight that when a random sample is used to predict bank FSRs, CART outperform all other techniques. Our evaluation criteria have confirmed our findings and both CART and discriminant analysis are superior to other techniques in predicting bank FSRs. This has implications for Middle Eastern banks as we would suggest that improving their bank FSR can improve their presence in the market.
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Prediction of financial strength ratings using machine learning and conventional techniques IMFI Dec 2017 Accepted Version
- Accepted Manuscript
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imfi 2017 04 Abdou
- Version of Record
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Accepted/In Press date: 20 December 2017
e-pub ahead of print date: 26 December 2017
Keywords:
FSR group membership, Capital Intelligence, Machine learning techniques, Conventional techniques
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Local EPrints ID: 417736
URI: http://eprints.soton.ac.uk/id/eprint/417736
PURE UUID: f1048a29-80df-40e8-a23f-474054190980
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Date deposited: 12 Feb 2018 17:30
Last modified: 16 Mar 2024 02:27
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Author:
Hussein A. Abdou
Author:
Wael M. Abdallah
Author:
James Mulkeen
Author:
Yan Wang
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