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The valuation of contingent claims using alternative numerical methods
Authors:Chuang-Chang Chang  Jun-Biao Lin
Affiliation:1. Department of Finance, National Central University, Taiwan;2. Department of Money and Banking, National Kaohsiung First University of Science and Technology, 2 Jhuoyue Rd., Nanzih, Kaohsiung City, 811, Taiwan, ROC;1. School of Economics and Management, Shaanxi University of Science and Technology, Xi''an, 710021, China;2. Business School, University of Shanghai for Science and Technology, 516 Jungong Rd., Shanghai, 200093, China;1. University of Oxford, Saïd Business School, Park End Street, Oxford OX1 1HP, UK;2. Queen''s University, Smith School of Business, Goodes Hall, 143 Union Street, Kingston, Ontario K7L 3N6, Canada
Abstract:This study compares the computational accuracy and efficiency of three numerical methods for the valuation of contingent claims written on multiple underlying assets; these are the trinomial tree, original Markov chain and Sobol–Markov chain approaches. The major findings of this study are: (i) the original Duan and Simonato (2001) Markov chain model provides more rapid convergence than the trinomial tree method, particularly in cases where the time to maturity period is less than nine months; (ii) when pricing options with longer maturity periods or with multiple underlying assets, the Sobol–Markov chain model can solve the problem of slow convergence encountered under the original Duan and Simonato (2001) Markov chain method; and (iii) since conditional density is used, as opposed to conditional probability, we can easily extend the Sobol–Markov chain model to the pricing of derivatives which are dependent on more than two underlying assets without dealing with high-dimensional integrals. We also use ‘executive stock options’ (ESOs) as an example to demonstrate that the Sobol–Markov chain method can easily be applied to the valuation of such ESOs.
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