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Using Machine Learning to Detect Financial Distress From Sustainability Reports

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  • Songshan Qin
  • Mohamed Bakoush
  • Frank McGroarty

Abstract

This study examines the incremental predictive value of sustainability reports in forecasting corporate financial distress. We first construct a unique sample of 1220 sustainability reports produced by 244 firms from S&P 500 index between 2018 and 2022. We then employ natural language processing (NLP) techniques to extract key features from the textual content of corporate sustainability reports, introducing them as a novel input to financial distress prediction models. A suite of machine learning algorithms is then applied to assess predictive performance. Our results show that incorporating textual sustainability disclosures significantly improves model performance relative to using only quantitative variables. These textual reports outline the corporate strategies on sustainability, providing additional insights that enhance the prediction of financial distress. Among the tested models, Random Forest and XGBoost regressors exhibit superior performance. We also find that the materiality of specific ESG issues in predicting financial distress varies across sectors. Overall, this study offers a framework for integrating sustainability reports and ensemble learning into corporate credit risk assessment.

Suggested Citation

  • Songshan Qin & Mohamed Bakoush & Frank McGroarty, 2026. "Using Machine Learning to Detect Financial Distress From Sustainability Reports," Business Strategy and the Environment, Wiley Blackwell, vol. 35(5), pages 7436-7458, July.
  • Handle: RePEc:bla:bstrat:v:35:y:2026:i:5:p:7436-7458
    DOI: 10.1002/bse.70563
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