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Convergence of the stochastic mesh estimator for pricing Bermudan options

Convergence of the stochastic mesh estimator for pricing Bermudan options
Convergence of the stochastic mesh estimator for pricing Bermudan options
Broadie and Glasserman (2004) proposed a Monte Carlo algorithm they named “stochastic mesh” for pricing high-dimensional Bermudan options. Based on simulated states of the assets underlying the option at each exercise opportunity, the method produces an estimator of the option value at each sampled state. We derive an asymptotic upper bound on the probability of error of the mesh estimator under the mild assumption of the finiteness of certain moments. Both the error size and the probability bound are functions that vanish with increasing sample size. Moreover, we report the mesh method’s empirical performance on test problems taken from the recent literature. We find that the mesh estimator has large positive bias that decays slowly with the sample size.
1460-1559
73-91
Avramidis, A.N.
d6c4b6b6-c0cf-4ed1-bbe1-a539937e4001
Matzinger, H.
d61254c0-c739-4f8b-aa73-40bcd9c4f820
Avramidis, A.N.
d6c4b6b6-c0cf-4ed1-bbe1-a539937e4001
Matzinger, H.
d61254c0-c739-4f8b-aa73-40bcd9c4f820

Avramidis, A.N. and Matzinger, H. (2004) Convergence of the stochastic mesh estimator for pricing Bermudan options. Journal of Computational Finance, 7 (4), 73-91.

Record type: Article

Abstract

Broadie and Glasserman (2004) proposed a Monte Carlo algorithm they named “stochastic mesh” for pricing high-dimensional Bermudan options. Based on simulated states of the assets underlying the option at each exercise opportunity, the method produces an estimator of the option value at each sampled state. We derive an asymptotic upper bound on the probability of error of the mesh estimator under the mild assumption of the finiteness of certain moments. Both the error size and the probability bound are functions that vanish with increasing sample size. Moreover, we report the mesh method’s empirical performance on test problems taken from the recent literature. We find that the mesh estimator has large positive bias that decays slowly with the sample size.

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Published date: 2004
Organisations: Operational Research

Identifiers

Local EPrints ID: 48878
URI: http://eprints.soton.ac.uk/id/eprint/48878
ISSN: 1460-1559
PURE UUID: fa2918ad-f7d7-4dd4-9e00-3a224541d4c2
ORCID for A.N. Avramidis: ORCID iD orcid.org/0000-0001-9310-8894

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Date deposited: 17 Oct 2007
Last modified: 16 Mar 2024 03:56

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Contributors

Author: A.N. Avramidis ORCID iD
Author: H. Matzinger

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