Title of article :
Prediction of Stock Price using Particle Swarm Optimization Algorithm and Box-Jenkins Time Series
Author/Authors :
Khajavi ، Shokrolah Shiraz University , Amiri ، Fateme Sadat Shiraz University
Abstract :
The purpose of this research is predicting the stock prices using the Particle Swarm Optimization Algorithm and BoxJenkins method. In this way, the information of 165 corporations is collected from 2001 to 2016. Then, this research considers price to earnings per share and earnings per share as main variables. The relevant regression equation was created using two variables of earnings per share and price to earnings per share, and stock prices were predicted through particle swarm optimization algorithm in MATLAB. IBM SPSS was used to predict stock prices with BoxJenkins time series. The Results indicate that particle swarm optimization algorithm with 4% error and BoxJenkins time series with 19% error, have the potential to predict stock prices of companies. Moreover, PSO algorithm model predict stock prices more precisely than Box-Jenkins time series. Also by using EViews 7 software, the results of Wilcoxon-Mann Whitney statistics showed that PSO algorithm predicts the stock price more accurately
Keywords :
Box , Jenkins Time Series , Earnings per Share , Particle Swarm Optimization (PSO) Algorithms , Price to Earnings Ratio , Stock Price
Journal title :
International Journal of Finance and Managerial Accounting
Journal title :
International Journal of Finance and Managerial Accounting