Leveraging Machine Learning and Data Analytics to Predict Corporate Financial Distress and Bankruptcy in the United States
Predictions about a company's financial distress and potential bankruptcy are important for a business, investor, or even a regulator. Imagine scanning the horizon for financial issues and being able to nip them in the bud. This study looks into the possibilities that lie within machine learnin...
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Published in | Asian Journal of Advanced Research and Reports Vol. 19; no. 6; pp. 65 - 78 |
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Main Authors | , , , , , , , |
Format | Journal Article |
Language | English |
Published |
11.06.2025
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Subjects | |
Online Access | Get full text |
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Summary: | Predictions about a company's financial distress and potential bankruptcy are important for a business, investor, or even a regulator. Imagine scanning the horizon for financial issues and being able to nip them in the bud. This study looks into the possibilities that lie within machine learning and data analysis for predicting corporate bankruptcy in the United States. We build predictive models that depend on huge streams of data alongside elaborate algorithms to accurately assess the scope of financial turmoil a company may be facing. The research highlights the most effective data analytic techniques alongside financial indicators that are accurate predictors of sound decision making for businesses and investors, thus revealing the level of ruin they may face. The discovery equips stakeholders with the right guidance in need to deal with dangers and stumbles within the financial world, avoiding losses. Data-driven analytics can be leveraged to create a better business landscape that isn’t as brittle and can withstand future challenges. The justification behind this study lies in the growing scope of corporate failure and the necessity of more rapid, more precise, and more interpretable means to predict financial distress. Given past attempts with common statistical techniques, there is still a gap in research using and comparing state-of-the-art machine learning algorithms on an extensive, up-to-date dataset. To bridge this lacuna, the research employs comparative Random Forest, XGBoost, Support Vector Machines, and Neural Networks analysis of financial data between 2010 and 2024 for 1,000 U.S. companies. Employing supervised learning, the dataset was divided into training, validation, and test periods. The findings indicated the highest predictive accuracy being that of XGBoost at 93.2%, followed by Neural Networks (92.6%), followed by Random Forest (91.4%), and SVM (88.7%). These results demonstrate the superior performance of ensemble-based models for early warning signalling of financial distress, thereby achieving the purpose of this study to enhance financial decision-making via early, precise prediction. |
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ISSN: | 2582-3248 2582-3248 |
DOI: | 10.9734/ajarr/2025/v19i61042 |