Author
Picarelli, A
Reisinger, C
Journal title
Systems and Control Letters
DOI
10.1016/j.sysconle.2019.104619
Issue
March 2020
Volume
137
Last updated
2024-04-08T09:35:42.933+01:00
Abstract
We introduce a class of numerical schemes for optimal stochastic control problems based on a novel Markov chain approximation, which uses, in turn, a piecewise constant policy approximation, Euler–Maruyama time stepping, and a Gauß-Hermite approximation of the Gaußian increments. We provide lower error bounds of order arbitrarily close to 1/2 in time and 1/3 in space for Lipschitz viscosity solutions, coupling probabilistic arguments with regularization techniques as introduced by Krylov. The corresponding order of the upper bounds is 1/4 in time and 1/5 in space. For sufficiently regular solutions, the order is 1 in both time and space for both bounds. Finally, we propose techniques for further improving the accuracy of the individual components of the approximation.

Symplectic ID
1080683
Favourite
Off
Publication type
Journal Article
Publication date
10 Feb 2020
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