Author
Abstract
Purpose - This study updates the literature review of Jones (1987) published in this journal. The study pays particular attention to two important themes that have shaped the field over the past 35 years: (1) the development of a range of innovative new statistical learning methods, particularly advanced machine learning methods such as stochastic gradient boosting, adaptive boosting, random forests and deep learning, and (2) the emergence of a wide variety of bankruptcy predictor variables extending beyond traditional financial ratios, including market-based variables, earnings management proxies, auditor going concern opinions (GCOs) and corporate governance attributes. Several directions for future research are discussed. Design/methodology/approach - This study provides a systematic review of the corporate failure literature over the past 35 years with a particular focus on the emergence of new statistical learning methodologies and predictor variables. This synthesis of the literature evaluates the strength and limitations of different modelling approaches under different circumstances and provides an overall evaluation the relative contribution of alternative predictor variables. The study aims to provide a transparent, reproducible and interpretable review of the literature. The literature review also takes a theme-centric rather than author-centric approach and focuses on structured themes that have dominated the literature since 1987. Findings - There are several major findings of this study. First, advanced machine learning methods appear to have the most promise for future firm failure research. Not only do these methods predict significantly better than conventional models, but they also possess many appealing statistical properties. Second, there are now a much wider range of variables being used to model and predict firm failure. However, the literature needs to be interpreted with some caution given the many mixed findings. Finally, there are still a number of unresolved methodological issues arising from the Jones (1987) study that still requiring research attention. Originality/value - The study explains the connections and derivations between a wide range of firm failure models, from simpler linear models to advanced machine learning methods such as gradient boosting, random forests, adaptive boosting and deep learning. The paper highlights the most promising models for future research, particularly in terms of their predictive power, underlying statistical properties and issues of practical implementation. The study also draws together an extensive literature on alternative predictor variables and provides insights into the role and behaviour of alternative predictor variables in firm failure research.
Suggested Citation
Stewart Jones, 2023.
"A literature survey of corporate failure prediction models,"
Journal of Accounting Literature, Emerald Group Publishing Limited, vol. 45(2), pages 364-405, March.
Handle:
RePEc:eme:jalpps:jal-08-2022-0086
DOI: 10.1108/JAL-08-2022-0086
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Cited by:
- Ha Nguyen, 2023.
"Credit Risk and Financial Performance of Commercial Banks: Evidence from Vietnam,"
Papers
2304.08217, arXiv.org, revised Apr 2023.
- Agnieszka Lisowska & Tadeusz Waściński & Jevgenijs Kurovs & Marcin Szpernalowski & Malgorzata Koszewska, 2023.
"The usefulness of financial instruments in assessing the bankruptcy risk of companies,"
Entrepreneurship and Sustainability Issues, VsI Entrepreneurship and Sustainability Center, vol. 11(1), pages 191-208, September.
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