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Considering Poisson random measures as the driving sources for
stochastic (partial) differential equations allows us to
incorporate jumps and to model sudden, unexpected phenomena. By
using such equations the present book introduces a new method for
modeling the states of complex systems perturbed by random sources
over time, such as interest rates in financial markets or
temperature distributions in a specific region. It studies
properties of the solutions of the stochastic equations, observing
the long-term behavior and the sensitivity of the solutions to
changes in the initial data. The authors consider an integration
theory of measurable and adapted processes in appropriate Banach
spaces as well as the non-Gaussian case, whereas most of the
literature only focuses on predictable settings in Hilbert spaces.
The book is intended for graduate students and researchers in
stochastic (partial) differential equations, mathematical finance
and non-linear filtering and assumes a knowledge of the required
integration theory, existence and uniqueness results and stability
theory. The results will be of particular interest to natural
scientists and the finance community. Readers should ideally be
familiar with stochastic processes and probability theory in
general, as well as functional analysis and in particular the
theory of operator semigroups.
Considering Poisson random measures as the driving sources for
stochastic (partial) differential equations allows us to
incorporate jumps and to model sudden, unexpected phenomena. By
using such equations the present book introduces a new method for
modeling the states of complex systems perturbed by random sources
over time, such as interest rates in financial markets or
temperature distributions in a specific region. It studies
properties of the solutions of the stochastic equations, observing
the long-term behavior and the sensitivity of the solutions to
changes in the initial data. The authors consider an integration
theory of measurable and adapted processes in appropriate Banach
spaces as well as the non-Gaussian case, whereas most of the
literature only focuses on predictable settings in Hilbert spaces.
The book is intended for graduate students and researchers in
stochastic (partial) differential equations, mathematical finance
and non-linear filtering and assumes a knowledge of the required
integration theory, existence and uniqueness results and stability
theory. The results will be of particular interest to natural
scientists and the finance community. Readers should ideally be
familiar with stochastic processes and probability theory in
general, as well as functional analysis and in particular the
theory of operator semigroups.
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Patricia Reinhart (Paperback)
Patricia Reinhart; Text written by Synne Genzmer, Ursula Maria Probst, Barbara Rudiger; Edited by Patricia Reinhart
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R754
R713
Discovery Miles 7 130
Save R41 (5%)
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Ships in 9 - 15 working days
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This book grew out of the Random Transformations and Invariance in
Stochastic Dynamics conference held in Verona from the 25th to the
28th of March 2019 in honour of Sergio Albeverio. It presents the
new area of studies concerning invariance and symmetry properties
of finite and infinite dimensional stochastic differential
equations.This area constitutes a natural, much needed, extension
of the theory of classical ordinary and partial differential
equations, where the reduction theory based on symmetry and
invariance of such classical equations has historically proved to
be very important both for theoretical and numerical studies and
has given rise to important applications. The purpose of the
present book is to present the state of the art of the studies on
stochastic systems from this point of view, present some of the
underlying fundamental ideas and methods involved, and to outline
the main lines for future developments. The main focus is on
bridging the gap between deterministic and stochastic approaches,
with the goal of contributing to the elaboration of a unified
theory that will have a great impact both from the theoretical
point of view and the point of view of applications. The reader is
a mathematician or a theoretical physicist. The main discipline is
stochastic analysis with profound ideas coming from Mathematical
Physics and Lie's Group Geometry. While the audience consists
essentially of academicians, the reader can also be a practitioner
with Ph.D., who is interested in efficient stochastic modelling.
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