A STATE-SPACE PARTITIONING METHOD FOR PRICING HIGH-DIMENSIONAL AMERICAN-STYLE OPTIONS |
| |
Authors: | Xing Jin Hwee Huat Tan Junhua Sun |
| |
Affiliation: | University of Warwick; National University of Singapore; Global Financial Markets, DBS Bank Ltd, Singapore 068809 |
| |
Abstract: | The pricing of American-style options by simulation-based methods is an important but difficult task primarily due to the feature of early exercise, particularly for high-dimensional derivatives. In this paper, a bundling method based on quasi-Monte Carlo sequences is proposed to price high-dimensional American-style options. The proposed method substantially extends Tilley's bundling algorithm to higher-dimensional situations. By using low-discrepancy points, this approach partitions the state space and forms bundles. A dynamic programming algorithm is then applied to the bundles to estimate the continuation value of an American-style option. A convergence proof of the algorithm is provided. A variety of examples with up to 15 dimensions are investigated numerically and the algorithm is able to produce computationally efficient results with good accuracy. |
| |
Keywords: | American-style option Monte Carlo simulation quasi-Monte Carlo sequence state-space partitioning |
|