Pricing Bermudan options using regression trees/random forests

21 Pages Posted: 15 Dec 2021

Date Written: December 13, 2021

Abstract

The value of an American option is the maximized value of the discounted cash flows from the
option. At each time step, one needs to compare the immediate exercise value with the continuation value and decide to exercise as soon as the exercise value is strictly greater than the continuation value. We can formulate this problem as a dynamic programming equation, where the main difficulty comes from the computation of the conditional expectations representing the continuation values at each time step. In (Longstaff and Schwartz, 2001), these conditional expectations were estimated using regressions on a finite-dimensional vector space (typically a polynomial basis). In this paper, we follow the same algorithm; only the conditional expectations are estimated using Regression trees or Random forests. We discuss the convergence of the LS algorithm when the standard least squares regression is replaced with regression trees. Finally, we expose some numerical results with regression trees and random forests. The random forest algorithm gives excellent results in high dimensions.

Keywords: Regression trees, Random forests, Bermudan options, Optimal stopping

Suggested Citation

El Filali Ech-chafiq, Zineb and Henry-Labordere, Pierre and Lelong, Jérôme, Pricing Bermudan options using regression trees/random forests (December 13, 2021). Available at SSRN: https://ssrn.com/abstract=3984200 or http://dx.doi.org/10.2139/ssrn.3984200

Zineb El Filali Ech-chafiq

Natixis ( email )

France

Pierre Henry-Labordere (Contact Author)

Qube Research & Technologies ( email )

Paris
France

Jérôme Lelong

University of Grenoble ( email )

Grenoble
France

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