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Mathematics, Advanced
Large Deviations for Stochastic Processes, Vol. 131 by Jin Feng β€” book cover

Large Deviations for Stochastic Processes, Vol. 131

by Jin Feng, Thomas G. Kurtz
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Synopsis

The book is devoted to the results on large deviations for a class of stochastic processes. Following an introduction and overview, the material is presented in three parts. Part 1 gives necessary and sufficient conditions for exponential tightness that are analogous to conditions for tightness in the theory of weak convergence. Part 2 focuses on Markov processes in metric spaces. For a sequence of such processes, convergence of Fleming's logarithmically transformed nonlinear semigroups is shown to imply the large deviation principle in a manner analogous to the use of convergence of linear semigroups in weak convergence. Viscosity solution methods provide applicable conditions for the necessary convergence. Part 3 discusses methods for verifying the comparison principle for viscosity solutions and applies the general theory to obtain a variety of new and known results on large deviations for Markov processes. In examples concerning infinite dimensional state spaces, new comparison principles are derived for a class of Hamilton-Jacobi equations in Hilbert spaces and in spaces of probability measures.

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Book Details

Published
December 1, 2006
Publisher
American Mathematical Society
Format
Hardcover
ISBN
9780821841457

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