Dynamic programming for stochastic target problems and geometric flows (Q1849473)

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scientific article; zbMATH DE number 1837100
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Dynamic programming for stochastic target problems and geometric flows
scientific article; zbMATH DE number 1837100

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    Dynamic programming for stochastic target problems and geometric flows (English)
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    1 December 2002
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    Summary: Given a controlled stochastic process, the reachability set is the collection of all initial data from which the state process can be driven into a target set at a specified time. Differential properties of these sets are studied by the dynamic programming principle which is proved by the Jankov-von Neumann measurable selection theorem. This principle implies that the reachability sets satisfy a geometric partial differential equation, which is the analogue of the Hamilton-Jacobi-Bellman equation for this problem. By appropriately choosing the controlled process, this connection provides a stochastic representation for mean curvature type geometric flows. Another application is the super-replication problem in financial mathematics. Several applications in this direction are also discussed.
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    optimal control
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    controlled stochastic process
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    reachability set
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    dynamic programming
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    Hamilton-Jacobi-Bellman equation
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