Dynamic Programming and Error Estimates for Stochastic Control Problems with Maximum Cost

被引:0
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作者
Olivier Bokanowski
Athena Picarelli
Hasnaa Zidani
机构
[1] Laboratoire Jacques-Louis Lions,
[2] Université Paris-Diderot (Paris 7) UFR de Mathématiques - Bât. Sophie Germain,undefined
[3] Projet Commands,undefined
[4] INRIA Saclay & ENSTA ParisTech,undefined
[5] Unité de Mathématiques appliquées (UMA),undefined
[6] ENSTA ParisTech,undefined
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关键词
Hamilton–Jacobi equations; Oblique Neuman boundary condition; Error estimate; Viscosity notion; Reachable sets under state constraints; Lookback options; Maximum cost; 49J20; 49L25; 65M15; 35K55;
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摘要
This work is concerned with stochastic optimal control for a running maximum cost. A direct approach based on dynamic programming techniques is studied leading to the characterization of the value function as the unique viscosity solution of a second order Hamilton–Jacobi–Bellman (HJB) equation with an oblique derivative boundary condition. A general numerical scheme is proposed and a convergence result is provided. Error estimates are obtained for the semi-Lagrangian scheme. These results can apply to the case of lookback options in finance. Moreover, optimal control problems with maximum cost arise in the characterization of the reachable sets for a system of controlled stochastic differential equations. Some numerical simulations on examples of reachable analysis are included to illustrate our approach.
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页码:125 / 163
页数:38
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