QA646 : Neural networks in the Black-Scholes-Vasicek market
Thesis > Central Library of Shahrood University > Mathematical Sciences > MSc > 2023
Authors:
Mahdiye Mohammadi [Author], Elham Dastranj[Supervisor], Abdolhamdi Abodlbaghi Ataabadi[Supervisor]
Abstarct: Abstract In this paper, the European option pricing is done using neural networks in the Black-Scholes-Vasicek market. The general purpose of this research is to compare the accuracy of neural network and Black-Scholes-Vasicheck models for the pricing of call options. In the sequel, the finite difference method is applied to find approximate solutions of partial differential equation related to pricing of call options in the considered market. In the design of the artificial neural network required for this research, the parameters of the Black-Scholes-Vasicek model have been used as network inputs, as well as 800 data from the daily price of stock options available in the Tehran Stock Exchange market (in 1400) as the network output. The approximate solutions obtained in this article, which were carried out by two methods of neural networks and finite differences on the Tehran stock exchange baxsed on the daily price of stock options, are shown that neural networks is more accurate method comparing with finite difference. The comparison of pricing results using neural networks with real prices in the assumed market is presented and shown via diagram, as well.
Keywords:
#Keywords: Option pricing #Neural network #Black-Scholes-Vasicek model #Finite difference method. Keeping place: Central Library of Shahrood University
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