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The systematic study of existence, uniqueness, and properties of
solutions to stochastic differential equations in infinite
dimensions arising from practical problems characterizes this
volume that is intended for graduate students and for pure and
applied mathematicians, physicists, engineers, professionals
working with mathematical models of finance. Major methods include
compactness, coercivity, monotonicity, in a variety of set-ups. The
authors emphasize the fundamental work of Gikhman and Skorokhod on
the existence and uniqueness of solutions to stochastic
differential equations and present its extension to infinite
dimension. They also generalize the work of Khasminskii on
stability and stationary distributions of solutions. New results,
applications, and examples of stochastic partial differential
equations are included. This clear and detailed presentation gives
the basics of the infinite dimensional version of the classic books
of Gikhman and Skorokhod and of Khasminskii in one concise volume
that covers the main topics in infinite dimensional stochastic
PDE's. By appropriate selection of material, the volume can be
adapted for a 1- or 2-semester course, and can prepare the reader
for research in this rapidly expanding area.
Stochastic Analysis for Gaussian Random Processes and Fields: With
Applications presents Hilbert space methods to study deep analytic
properties connecting probabilistic notions. In particular, it
studies Gaussian random fields using reproducing kernel Hilbert
spaces (RKHSs). The book begins with preliminary results on
covariance and associated RKHS before introducing the Gaussian
process and Gaussian random fields. The authors use chaos expansion
to define the Skorokhod integral, which generalizes the Ito
integral. They show how the Skorokhod integral is a dual operator
of Skorokhod differentiation and the divergence operator of
Malliavin. The authors also present Gaussian processes indexed by
real numbers and obtain a Kallianpur-Striebel Bayes' formula for
the filtering problem. After discussing the problem of equivalence
and singularity of Gaussian random fields (including a
generalization of the Girsanov theorem), the book concludes with
the Markov property of Gaussian random fields indexed by measures
and generalized Gaussian random fields indexed by Schwartz space.
The Markov property for generalized random fields is connected to
the Markov process generated by a Dirichlet form.
Stochastic Analysis for Gaussian Random Processes and Fields: With
Applications presents Hilbert space methods to study deep analytic
properties connecting probabilistic notions. In particular, it
studies Gaussian random fields using reproducing kernel Hilbert
spaces (RKHSs). The book begins with preliminary results on
covariance and associated RKHS before introducing the Gaussian
process and Gaussian random fields. The authors use chaos expansion
to define the Skorokhod integral, which generalizes the Ito
integral. They show how the Skorokhod integral is a dual operator
of Skorokhod differentiation and the divergence operator of
Malliavin. The authors also present Gaussian processes indexed by
real numbers and obtain a Kallianpur-Striebel Bayes' formula for
the filtering problem. After discussing the problem of equivalence
and singularity of Gaussian random fields (including a
generalization of the Girsanov theorem), the book concludes with
the Markov property of Gaussian random fields indexed by measures
and generalized Gaussian random fields indexed by Schwartz space.
The Markov property for generalized random fields is connected to
the Markov process generated by a Dirichlet form.
The systematic study of existence, uniqueness, and properties of
solutions to stochastic differential equations in infinite
dimensions arising from practical problems characterizes this
volume that is intended for graduate students and for pure and
applied mathematicians, physicists, engineers, professionals
working with mathematical models of finance. Major methods include
compactness, coercivity, monotonicity, in a variety of set-ups. The
authors emphasize the fundamental work of Gikhman and Skorokhod on
the existence and uniqueness of solutions to stochastic
differential equations and present its extension to infinite
dimension. They also generalize the work of Khasminskii on
stability and stationary distributions of solutions. New results,
applications, and examples of stochastic partial differential
equations are included. This clear and detailed presentation gives
the basics of the infinite dimensional version of the classic books
of Gikhman and Skorokhod and of Khasminskii in one concise volume
that covers the main topics in infinite dimensional stochastic
PDE's. By appropriate selection of material, the volume can be
adapted for a 1- or 2-semester course, and can prepare the reader
for research in this rapidly expanding area.
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