An American option grants the holder the right to select the time at which to exercise the option, so pricing an American option entails solving an optimal stopping problem. Difficulties in applying standard numerical methods to complex pricing problems have motivated the development of techniques that combine Monte Carlo simulation with dynamic programming. One class of methods approximates the option value at each time using a linear combination of basis functions, and combines Monte Carlo with backward induction to estimate optimal coefficients in each approximation. We analyze the convergence of such a method as both the number of basis functions and the number of simulated paths increase. We get explicit results when the basis functions are polynomials and the underlying process is either Brownian motion or geometric Brownian motion. We show that the number of paths required for worst-case convergence grows exponentially in the degree of the approximating polynomials in the case of Brownian motion and faster in the case of geometric Brownian motion.
Publié le : 2004-11-14
Classification:
Optimal stopping,
Monte Carlo methods,
dynamic programming,
orthogonal polynomials,
finance,
60G40,
65C05,
65C50,
60G35
@article{1099674090,
author = {Glasserman, Paul and Yu, Bin},
title = {Number of paths versus number of basis functions in American option pricing},
journal = {Ann. Appl. Probab.},
volume = {14},
number = {1},
year = {2004},
pages = { 2090-2119},
language = {en},
url = {http://dml.mathdoc.fr/item/1099674090}
}
Glasserman, Paul; Yu, Bin. Number of paths versus number of basis functions in American option pricing. Ann. Appl. Probab., Tome 14 (2004) no. 1, pp. 2090-2119. http://gdmltest.u-ga.fr/item/1099674090/