Abstract

Corporate default predictions play an essential role in each sector of the economy, as highlighted by the global financial crisis and the increase in credit risk. This study reviews the corporate default prediction literature from the perspectives of financial engineering and machine learning. We define three generations of statistical models: discriminant analyses, binary response models, and hazard models. In addition, we introduce three representative machine learning methodologies: support vector machines, decision trees, and artificial neural network algorithms. For both the statistical models and machine learning methodologies, we identify the key studies used in corporate default prediction. By comparing these methods with findings from the interdisciplinary literature, our review suggests some new tasks in the field of machine learning for predicting corporate defaults. First, a corporate default prediction model should be a multi-period model in which future outcomes are affected by past decisions. Second, the stock price and the corporate value determined by the stock market are important factors to use in default predictions. Finally, a corporate default prediction model should be able to suggest the cause of default.

Highlights

  • Forecasts of corporate defaults are used in various fields across the economy

  • By employing machine learning algorithms and statistical models, corporate default predictions are at the cutting edge of advanced financial engineering

  • We review the corporate default prediction literature from the perspectives of financial engineering and machine learning simultaneously

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Summary

Introduction

Forecasts of corporate defaults are used in various fields across the economy Corporations can diagnose their current statuses based on prediction models and establish their strategies. Executives can run their businesses more stably by managing key indicators that affect corporate default risk. Investors can revise their strategies and improve their portfolios by examining the likelihood of corporate defaults. Governments can establish macroprudential policies and improve related financial regulations using corporate default predictions. The recent global financial crisis and the increase in credit risk highlight the importance of this field Because of their importance, corporate default predictions have been extensively studied since the work of Beaver [1]

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