Financial risk assessment in shipping: a holistic machine learning based methodology
Mark Clintworth (),
Dimitrios Lyridis and
Evangelos Boulougouris
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Mark Clintworth: University of Strathclyde
Dimitrios Lyridis: National Technical University of Athens
Evangelos Boulougouris: University of Strathclyde
Maritime Economics & Logistics, 2023, vol. 25, issue 1, No 4, 90-121
Abstract:
Abstract Corporate financial distress (FD) prediction models are of great importance to all stakeholders, including regulators and banks, who rely on acceptable estimates of default risk, for both individual borrowers and bank loan portfolios. Whilst this subject has been covered extensively in finance research, its application to international shipping companies has been limited while the focus has mainly been on the application of traditional linear modelling, using sparse, cross-sectional financial statement data. Insufficient attention has been paid to the noisy and incomplete nature of shipping company financial statement information. This study contributes to the literature through the design, development and testing of a novel holistic machine learning methodology which integrates predictor evaluation and missing data analysis into the distress prediction process. The model was validated using a longitudinal dataset of over 5000 company year-end financial statements combined with macroeconomic and market predictors. We applied this methodology first for individual company level distress prediction before testing the models’ ability to provide accurate confidence intervals by backtesting conditional value-at-risk estimations of the distress rates for bank portfolios. We conclude that, by adopting a holistic approach, our methodology can enhance financial monitoring of company loans and bank loan portfolios thereby providing a practical “early warning system” for financial distress.
Keywords: Financial distress; Machine learning; Multivariate imputation; Random forest; Extreme gradient boosting; Generalised additive modelling; Conditional value-at-risk (search for similar items in EconPapers)
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:pal:marecl:v:25:y:2023:i:1:d:10.1057_s41278-020-00183-2
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DOI: 10.1057/s41278-020-00183-2
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