Abstract

The prediction of stock price crash risk is an important and widely studied topic in both accounting and finance, since crash risk has a significant impact on shareholders, creditors, managers, investors, and regulators. In this paper, I develop a neural network crash risk prediction model that has not been explored before. In addition, I compare the performance of the neural network model with the logistic model and random forecast. I show that the neural network crash risk prediction model provides a significant improvement in prediction accuracy over logistic regression and random forecast . The results indicate that the neural network methodology is a good alternative to predict stock price crash risk. The prediction of stock price crash risk is an important and widely studied topic in both accounting and finance, since crash risk has a significant impact on shareholders, creditors, managers, investors, and regulators. In this paper, I develop a neural network crash risk prediction model that has not been explored before. In addition, I compare the performance of the neural network model with the logistic model and random forecast. I show that the neural network crash risk prediction model provides a significant improvement in prediction accuracy over logistic regression and random forecast . The results indicate that the neural network methodology is a good alternative to predict stock price crash risk. Key words: stock price crash risk; neural network;

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