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The infinite dimensional analysis as a branch of mathematical
sciences was formed in the late 19th and early 20th centuries.
Motivated by problems in mathematical physics, the first steps in
this field were taken by V. Volterra, R. GateallX, P. Levy and M.
Frechet, among others (see the preface to Levy 2]). Nevertheless,
the most fruitful direction in this field is the infinite
dimensional integration theory initiated by N. Wiener and A. N.
Kolmogorov which is closely related to the developments of the
theory of stochastic processes. It was Wiener who constructed for
the first time in 1923 a probability measure on the space of all
continuous functions (i. e. the Wiener measure) which provided an
ideal math ematical model for Brownian motion. Then some important
properties of Wiener integrals, especially the quasi-invariance of
Gaussian measures, were discovered by R. Cameron and W. Martin l,
2, 3]. In 1931, Kolmogorov l] deduced a second partial differential
equation for transition probabilities of Markov processes order
with continuous trajectories (i. e. diffusion processes) and thus
revealed the deep connection between theories of differential
equations and stochastic processes. The stochastic analysis created
by K. Ito (also independently by Gihman 1]) in the forties is
essentially an infinitesimal analysis for trajectories of
stochastic processes. By virtue of Ito's stochastic differential
equations one can construct diffusion processes via direct
probabilistic methods and treat them as function als of Brownian
paths (i. e. the Wiener functionals)."
Semimartingale Theory and Stochastic Calculus presents a systematic and detailed account of the general theory of stochastic processes, the semimartingale theory, and related stochastic calculus. The book emphasizes stochastic integration for semimartingales, characteristics of semimartingales, predictable representation properties and weak convergence of semimartingales. It also includes a concise treatment of absolute continuity and singularity, contiguity, and entire separation of measures by semimartingale approach. Two basic types of processes frequently encountered in applied probability and statistics are highlighted: processes with independent increments and marked point processes encountered frequently in applied probability and statistics.
Semimartingale Theory and Stochastic Calculus is a self-contained and comprehensive book that will be valuable for research mathematicians, statisticians, engineers, and students.
The infinite dimensional analysis as a branch of mathematical
sciences was formed in the late 19th and early 20th centuries.
Motivated by problems in mathematical physics, the first steps in
this field were taken by V. Volterra, R. GateallX, P. Levy and M.
Frechet, among others (see the preface to Levy 2]). Nevertheless,
the most fruitful direction in this field is the infinite
dimensional integration theory initiated by N. Wiener and A. N.
Kolmogorov which is closely related to the developments of the
theory of stochastic processes. It was Wiener who constructed for
the first time in 1923 a probability measure on the space of all
continuous functions (i. e. the Wiener measure) which provided an
ideal math ematical model for Brownian motion. Then some important
properties of Wiener integrals, especially the quasi-invariance of
Gaussian measures, were discovered by R. Cameron and W. Martin l,
2, 3]. In 1931, Kolmogorov l] deduced a second partial differential
equation for transition probabilities of Markov processes order
with continuous trajectories (i. e. diffusion processes) and thus
revealed the deep connection between theories of differential
equations and stochastic processes. The stochastic analysis created
by K. Ito (also independently by Gihman 1]) in the forties is
essentially an infinitesimal analysis for trajectories of
stochastic processes. By virtue of Ito's stochastic differential
equations one can construct diffusion processes via direct
probabilistic methods and treat them as function als of Brownian
paths (i. e. the Wiener functionals)."
This book gives a systematic introduction to the basic theory of
financial mathematics, with an emphasis on applications of
martingale methods in pricing and hedging of contingent claims,
interest rate term structure models, and expected utility
maximization problems. The general theory of static risk measures,
basic concepts and results on markets of semimartingale model, and
a numeraire-free and original probability based framework for
financial markets are also included. The basic theory of
probability and Ito's theory of stochastic analysis, as preliminary
knowledge, are presented.
These proceedings contain both general expository papers and
research announcements in several active areas of probability and
statistics. A large range of topics is covered from theory (Sobolev
inequalities and heat semigroup, Brownian motions, white noise
analysis, geometrical structure of statistical experiments) to
applications (simulated annealing, ARMA models).
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