Article ID: | iaor20012373 |
Country: | United States |
Volume: | 26 |
Issue: | 3 |
Start Page Number: | 283 |
End Page Number: | 302 |
Publication Date: | May 1995 |
Journal: | Decision Sciences |
Authors: | Jain B.A., Nag B.N. |
Keywords: | investment, statistics: data envelopment analysis |
In recent times, managerial applications of neural networks, especially in the area of financial services, has received considerable attention. In this paper, neural network models are developed for a new application: the pricing of Initial Public Offerings (IPOs). Previous empirical studies provide consistent evidence of considerable inefficiency in the pricing of new issues. Neural network models using publicly available financial data as inputs are developed to price IPOs. The pricing performance and the economic benefits of the neural network models are evaluated. Significant economic gains are documented with neural networks. Several tests to establish generalizability and robustness of the results are conducted.