:: ::
Back to the articles list Back to browse issues page
Predict Stock Prices Using Neural Network and Random Forest Case Study of Stock Bank Mellat
Maryam Mohammadi * , Habib Jafari , Azad Khanzadi
Razi University
Abstract:   (52 Views)
One of the important issues in statistical science is the prediction of nonlinear models. In the present study, using the Perceptron neural network model and the stochastic forest model, the stock price of Bank Mellat has been predicted during ten years between 1990 and 1999. The MAPE criterion has been used as a measurement criterion. Both are explained in the field of supervised learning. Technical indicators such as MACD, SO, OBV, RSI% RW, etc. have been used as independent variables. Experimental findings from a ten-year study show well that both models alone can predict stock prices, but the neural network model performed better than the random forest, so it has better predictive power.
Keywords: neural network, random forest, stock price forecast, Bank Mellat
Full-Text [PDF 1229 kb]   (23 Downloads)    
Type of Study: Research | Subject: Special
Received: 2024/06/12 | Accepted: 2021/08/24


XML   Persian Abstract   Print



Rights and permissions
Creative Commons License This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Back to the articles list Back to browse issues page