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UM E-Theses Collection (澳門大學電子學位論文庫)

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Title

Quasi-Monte Carlo methods and their applications in high dimensional option pricing

English Abstract

Quasi-Monte Carlo methods are revised methods of Monte Carlo methods. They both are simply and easy numerical methods to estimate the values of certain integrals. Pseudorandom numbers are used in Monte Carlo method and therefore it gives a probabilistic error bound in the valuation. However Quasi-Monte Carlo method employs deterministic sequences in the valuation. This causes the error bound to become deterministic. Furthermore, the distribution of pseudorandom numbers is not also appropriate, which may cause a decrease in accuracy in the valuation, so we need to find another sequence in which the distribution is more appropriate and controllable. In the first chapter of this thesis, we will introduce a brief history of Monte Carlo methods as well as the basic of both the Monte Carlo methods and Quasi-Monte Carlo methods. In chapter two, we will introduce a variety of low discrepancy sequences, which will be applied in option pricing using Quasi-Monte Carlo methods. Chapter three is an introduction of different options and their pricing methods. Chapter four is a report of the numerical experiments for pricing options by using Quasi-Monte Carlo methods. In this chapter, comparison of Monte Carlo methods and Quasi-Monte Carlo methods in pricing options as well as the comparison of pricing options by Quasi-Monte Carlo methods using different low discrepancy sequences will be shown. Chapter five is a conclusion of this thesis. We found that Sobol’ sequence is a good choice for Quasi-Monte Carlo method in option pricing. The relative error is rather small even in higher dimensions. With this method, theoretically the dimensions of an option being priced may be increased up to thousand.

Issue date

2011.

Author

Ng, Man Yun

Faculty
Faculty of Science and Technology
Department
Department of Mathematics
Degree

M.Sc.

Subject

Monte Carlo method

Options (Finance) -- Prices -- Mathematical models

Supervisor

Ding, Deng

Files In This Item

TOC & Abstract

Full-text (Intranet only)

Location
1/F Zone C
Library URL
991007322839706306