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Controlled Diffusion Processes (Stochastic Modelling and Applied Probability, 14)

Controlled Diffusion Processes (Stochastic Modelling and Applied Probability, 14)

Controlled Diffusion Processes (Stochastic Modelling and Applied Probability,
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Controlled Diffusion Processes (Stochastic Modelling and Applied Probability, 14) Paperback - 2008

by Nikolai Vladimirovich Krylov

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Reader reviews for Controlled Diffusion Processes (Stochastic Modelling and Applied Probability, 14)

From the publisher

Stochastic control theory is a relatively young branch of mathematics. The beginning of its intensive development falls in the late 1950s and early 1960s. urin that period an extensive literature appeared on optimal stochastic control using the quadratic performance criterion (see references in Wonham [76]). At the same time, Girsanov [25] and Howard [26] made the first steps in constructing a general theory, based on Bellman's technique of dynamic programming, developed by him somewhat earlier [4]. Two types of engineering problems engendered two different parts of stochastic control theory. Problems of the first type are associated with multistep decision making in discrete time, and are treated in the theory of discrete stochastic dynamic programming. For more on this theory, we note in addition to the work of Howard and Bellman, mentioned above, the books by Derman [8], Mine and Osaki [55], and Dynkin and Yushkevich [12]. Another class of engineering problems which encouraged the development of the theory of stochastic control involves time continuous control of a dynamic system in the presence of random noise. The case where the system is described by a differential equation and the noise is modeled as a time continuous random process is the core of the optimal control theory of diffusion processes. This book deals with this latter theory.

From the rear cover

This book deals with the optimal control of solutions of fully observable It-type stochastic differential equations. The validity of the Bellman differential equation for payoff functions is proved and rules for optimal control strategies are developed.

Topics include optimal stopping; one dimensional controlled diffusion; the Lp-estimates of stochastic integral distributions; the existence theorem for stochastic equations; the It formula for functions; and the Bellman principle, equation, and normalized equation.

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