A dynamic look-ahead Monte Carlo algorithm for pricing Bermudan options

Citation
Egloff, Daniel et al., A dynamic look-ahead Monte Carlo algorithm for pricing Bermudan options, Annals of applied probability , 17(4), 2007, pp. 1138-1171
ISSN journal
10505164
Volume
17
Issue
4
Year of publication
2007
Pages
1138 - 1171
Database
ACNP
SICI code
Abstract
Under the assumption of no-arbitrage, the pricing of American and Bermudan options can be casted into optimal stopping problems. We propose a new adaptive simulation based algorithm for the numerical solution of optimal stopping problems in discrete time. Our approach is to recursively compute the so-called continuation values. They are defined as regression functions of the cash flow, which would occur over a series of subsequent time periods, if the approximated optimal exercise strategy is applied. We use nonparametric least squares regression estimates to approximate the continuation values from a set of sample paths which we simulate from the underlying stochastic process. The parameters of the regression estimates and the regression problems are chosen in a data-dependent manner. We present results concerning the consistency and rate of convergence of the new algorithm. Finally, we illustrate its performance by pricing high-dimensional Bermudan basket options with strangle-spread payoff based on the average of the underlying assets.