Title of article :
Stock Option Pricing by Augmented Monte-Carlo Simulation Models
Author/Authors :
Seifoddini, Jalal Department of Financial Management - Islamshahr Branch - Islamic Azad University - Islamshahr, Iran
Abstract :
Studying stock options is still a pristine area of research in the Iranian capital
market. This is due to the lack of data as well as the complexity of valu-ation
methodologies. In the present paper, using the Monte-Carlo simulation, we have
estimated the value of stock options traded on Tehran Stock Exchange and examined
whether the use of a control variate or antithetic variate augmented methods
can lower the standard error of estimates. Furthermore, the estimated values of
the three models under consideration, including of crude Monte-Carlo, control
variates augmented Monte-Carlo, and antithetic variates augmented Mon-te-
Carlo are compared with each other and with options market prices. The results
show that the standard error of the antithetic variate method is less than the crude
method and control variate method. However, control variate augmented Monte-
Carlo model is more powerful than the crude Monte-Carlo and antithetic variate
augmented Monte-Carlo method. Therefore, we can conclude that the control variate
augmented Monte-Carlo model has a better performance in estimating the
value of trading stock options and its estimated values are closer to the market
prices.
Keywords :
Antithetic Variate , Control Variate , Monte Carlo Simulation , Stock Options , Stepwise Regression
Journal title :
Advances in Mathematical Finance and Applications