Adaptive θ-methods for pricing American options

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We develop adaptive θ-methods for solving the Black–Scholes PDE for American options. By adding a small, continuous term, the Black–Scholes PDE becomes an advection–diffusion-reaction equation on a fixed spatial domain. Standard implementation of θ-methods would require a Newton-type iterative procedure at each time step thereby increasing the computational complexity of the methods. Our linearly implicit approach avoids such complications. We establish a general framework under which θ-methods satisfy a discrete version of the positivity constraint characteristic of American options, and numerically demonstrate the sensitivity of the constraint. The positivity results are established for the single-asset and independent two-asset models. In addition, we have incorporated and analyzed an adaptive time-step control strategy to increase the computational efficiency. Numerical experiments are presented for one- and two-asset American options, using adaptive exponential splitting for two-asset problems. The approach is compared with an iterative solution of the two-asset problem in terms of computational efficiency.

论文关键词:65L05,65M05,Black–Scholes PDE,American options,θ-methods,Method of Lines,Locally one-dimensional exponential splitting,Adaptive time-stepping

论文评审过程:Received 15 May 2006, Revised 8 March 2007, Available online 25 October 2007.

论文官网地址:https://doi.org/10.1016/j.cam.2007.10.035