Managerial Applications of Neural Networks: The Case of Bank Failure Predictions 论文

1992Management Science引用 1122
Financial Distress and Bankruptcy PredictionStock Market Forecasting MethodsImbalanced Data Classification Techniques

摘要

This paper introduces a neural-net approach to perform discriminant analysis in business research. A neural net represents a nonlinear discriminant function as a pattern of connections between its processing units. Using bank default data, the neural-net approach is compared with linear classifier, logistic regression, kNN, and ID3. Empirical results show that neural nets is a promising method of evaluating bank conditions in terms of predictive accuracy, adaptability, and robustness. Limitations of using neural nets as a general modeling tool are also discussed.