ABSTRACT
One of the most important methods of opacity accounting information by management is to accelerate the
identification of good news versus delaying the identification of bad news on profits, but there is always a final
level of accumulation of bad news in the company, and by reaching that its final level, these bad news will be
released, which will lead to a Stock Price Crash Risk. In fact, stock price collapse is a phenomenon in which
stock prices are subject to severe negative and sudden adjustments. Accordingly, the first purpose of this research
is to model the Stock Price Crash Risk of the listed companies at the Tehran Stock Exchange by using an
optimal algorithm The cumulative particles and comparison with the results of logistic regression model. To this,
a hypothesis was developed for the study of this issue and the data of 101 listed companies of Tehran Stock
Exchange for the period between 2010 and 2014 were analyzed. First, 14 independent variables were introduced
as inputs of the combined genetic algorithm and artificial neural network, which was considered as a feature
selection method, and 7 optimal variables were selected. Then, using particle cumulative algorithm and logistic
regression, predicted The Crashs. To calculate the Stock Price Crash Risk, a Stock Price Crash Period criterion
has been used. In The Second Stage, the particle algorithm was used as a feature selection, and this time, to
calculate the Crash risk, the NCSKEW criterion was used. Finally, the optimal variables were entered into the
Ant Colony algorithm and the results were compared with the multivariable regression. In the second step, MSE
and MAE were used to compare the results. The results of the research show that the particle Swarm
Optimization and Ant colony are more able than traditional regression (lojestic and multivariable) to predict the
Crashs. Therefore, the research hypothesises are confirmed.