An edition of Stochastic Control Theory (2014)

Stochastic Control Theory

Dynamic Programming Principle

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December 25, 2021 | History
An edition of Stochastic Control Theory (2014)

Stochastic Control Theory

Dynamic Programming Principle

This book offers a systematic introduction to the optimal stochastic control theory via the dynamic programming principle, which is a powerful tool to analyze control problems. First we consider completely observable control problems with finite horizons. Using a time discretization we construct a nonlinear semigroup related to the dynamic programming principle (DPP), whose generator provides the Hamilton–Jacobi–Bellman (HJB) equation, and we characterize the value function via the nonlinear semigroup, besides the viscosity solution theory. When we control not only the dynamics of a system but also the terminal time of its evolution, control-stopping problems arise. This problem is treated in the same frameworks, via the nonlinear semigroup. Its results are applicable to the American option price problem.

Zero-sum two-player time-homogeneous stochastic differential games and viscosity solutions of the Isaacs equations arising from such games are studied via a nonlinear semigroup related to DPP (the min-max principle, to be precise). Using semi-discretization arguments, we construct the nonlinear semigroups whose generators provide lower and upper Isaacs equations. Concerning partially observable control problems, we refer to stochastic parabolic equations driven by colored Wiener noises, in particular, the Zakai equation. The existence and uniqueness of solutions and regularities as well as Itô's formula are stated. A control problem for the Zakai equations has a nonlinear semigroup whose generator provides the HJB equation on a Banach space. The value function turns out to be a unique viscosity solution for the HJB equation under mild conditions.

This edition provides a more generalized treatment of the topic than does the earlier book Lectures on Stochastic Control Theory (ISI Lecture Notes 9), where time-homogeneous cases are dealt with. Here, for finite time-horizon control problems, DPP was formulated as a one-parameter nonlinear semigroup, whose generator provides the HJB equation, by using a time-discretization method. The semigroup corresponds to the value function and is characterized as the envelope of Markovian transition semigroups of responses for constant control processes. Besides finite time-horizon controls, the book discusses control-stopping problems in the same frameworks.

Publish Date
Publisher
Springer
Pages
265

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Edition Availability
Cover of: Stochastic Control Theory
Stochastic Control Theory: Dynamic Programming Principle
Aug 23, 2016, Springer
paperback
Cover of: Stochastic Control Theory
Stochastic Control Theory: Dynamic Programming Principle
Jan 09, 2015, Springer
paperback
Cover of: Stochastic Control Theory
Stochastic Control Theory: Dynamic Programming Principle
Dec 09, 2014, Springer
hardcover
Cover of: Stochastic Control Theory
Stochastic Control Theory: Dynamic Programming Principle
2014, Springer Japan
in English

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Book Details


Edition Notes

Source title: Stochastic Control Theory: Dynamic Programming Principle (Probability Theory and Stochastic Modelling (72))

Classifications

Library of Congress
QA1-939

The Physical Object

Format
paperback
Number of pages
265

Edition Identifiers

Open Library
OL27996857M
ISBN 10
443156408X
ISBN 13
9784431564089

Work Identifiers

Work ID
OL20705066W

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December 25, 2021 Edited by ImportBot import existing book
May 4, 2020 Created by ImportBot Imported from amazon.com record