Corporate Bankruptcy Prediction: A Case of Emerging Economies
Keywords:
Bankruptcy prediction, Financial distress, Machine learningAbstract
Bankruptcy has recently upraised as an excessive concern due to the recent world crisis. Early forecasting of firms bankruptcy provides decision-support information for financial and regulatory institutions.
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