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"Concrete Functional Calculus" focuses primarily on
differentiability of some nonlinear operators on functions or pairs
of functions. This includes composition of two functions, and the
product integral, taking a matrix- or operator-valued coefficient
function into a solution of a system of linear differential
equations with the given coefficients. In this book existence and
uniqueness of solutions are proved under suitable assumptions for
nonlinear integral equations with respect to possibly discontinuous
functions having unbounded variation. Key features and topics:
Extensive usage of p-variation of functions, and applications to
stochastic processes.
This work will serve as a thorough reference on its main topics
for researchers and graduate students with a background in real
analysis and, for Chapter 12, in probability."
Probability limit theorems in infinite-dimensional spaces give
conditions un der which convergence holds uniformly over an
infinite class of sets or functions. Early results in this
direction were the Glivenko-Cantelli, Kolmogorov-Smirnov and
Donsker theorems for empirical distribution functions. Already in
these cases there is convergence in Banach spaces that are not only
infinite-dimensional but nonsep arable. But the theory in such
spaces developed slowly until the late 1970's. Meanwhile, work on
probability in separable Banach spaces, in relation with the
geometry of those spaces, began in the 1950's and developed
strongly in the 1960's and 70's. We have in mind here also work on
sample continuity and boundedness of Gaussian processes and random
methods in harmonic analysis. By the mid-70's a substantial theory
was in place, including sharp infinite-dimensional limit theorems
under either metric entropy or geometric conditions. Then, modern
empirical process theory began to develop, where the collection of
half-lines in the line has been replaced by much more general
collections of sets in and functions on multidimensional spaces.
Many of the main ideas from probability in separable Banach spaces
turned out to have one or more useful analogues for empirical
processes. Tightness became "asymptotic equicontinuity. " Metric
entropy remained useful but also was adapted to metric entropy with
bracketing, random entropies, and Kolchinskii-Pollard entropy. Even
norms themselves were in some situations replaced by measurable
majorants, to which the well-developed separable theory then
carried over straightforwardly."
Written by one of the best-known probabilists in the world this
text offers a clear and modern presentation of modern probability
theory and an exposition of the interplay between the properties of
metric spaces and those of probability measures. This text is the
first at this level to include discussions of the subadditive
ergodic theorems, metrics for convergence in laws and the Borel
isomorphism theory. The proofs for the theorems are consistently
brief and clear and each chapter concludes with a set of historical
notes and references. This book should be of interest to students
taking degree courses in real analysis and/or probability theory.
"Concrete Functional Calculus" focuses primarily on
differentiability of some nonlinear operators on functions or pairs
of functions. This includes composition of two functions, and the
product integral, taking a matrix- or operator-valued coefficient
function into a solution of a system of linear differential
equations with the given coefficients. In this book existence and
uniqueness of solutions are proved under suitable assumptions for
nonlinear integral equations with respect to possibly discontinuous
functions having unbounded variation. Key features and topics:
Extensive usage of p-variation of functions, and applications to
stochastic processes.
This work will serve as a thorough reference on its main topics
for researchers and graduate students with a background in real
analysis and, for Chapter 12, in probability."
Probability limit theorems in infinite-dimensional spaces give
conditions un der which convergence holds uniformly over an
infinite class of sets or functions. Early results in this
direction were the Glivenko-Cantelli, Kolmogorov-Smirnov and
Donsker theorems for empirical distribution functions. Already in
these cases there is convergence in Banach spaces that are not only
infinite-dimensional but nonsep arable. But the theory in such
spaces developed slowly until the late 1970's. Meanwhile, work on
probability in separable Banach spaces, in relation with the
geometry of those spaces, began in the 1950's and developed
strongly in the 1960's and 70's. We have in mind here also work on
sample continuity and boundedness of Gaussian processes and random
methods in harmonic analysis. By the mid-70's a substantial theory
was in place, including sharp infinite-dimensional limit theorems
under either metric entropy or geometric conditions. Then, modern
empirical process theory began to develop, where the collection of
half-lines in the line has been replaced by much more general
collections of sets in and functions on multidimensional spaces.
Many of the main ideas from probability in separable Banach spaces
turned out to have one or more useful analogues for empirical
processes. Tightness became "asymptotic equicontinuity. " Metric
entropy remained useful but also was adapted to metric entropy with
bracketing, random entropies, and Kolchinskii-Pollard entropy. Even
norms themselves were in some situations replaced by measurable
majorants, to which the well-developed separable theory then
carried over straightforwardly."
The book is about differentiability of six operators on functions
or pairs of functions: composition (f of g), integration (of f dg),
multiplication and convolution of two functions, both varying, and
the product integral and inverse operators for one function. The
operators are differentiable with respect to p-variation norms with
optimal remainder bounds. Thus the functions as arguments of the
operators can be nonsmooth, possibly discontinuous, but four of the
six operators turn out to be analytic (holomorphic) for some
p-variation norms. The reader will need to know basic real
analysis, including Riemann and Lebesgue integration. The book is
intended for analysts, statisticians and probabilists. Analysts and
statisticians have each studied the differentiability of some of
the operators from different viewpoints, and this volume seeks to
unify and expand their results.
In this new edition of a classic work on empirical processes the
author, an acknowledged expert, gives a thorough treatment of the
subject with the addition of several proved theorems not included
in the first edition, including the Bretagnolle-Massart theorem
giving constants in the Komlos-Major-Tusnady rate of convergence
for the classical empirical process, Massart's form of the
Dvoretzky-Kiefer-Wolfowitz inequality with precise constant,
Talagrand's generic chaining approach to boundedness of Gaussian
processes, a characterization of uniform Glivenko-Cantelli classes
of functions, Gine and Zinn's characterization of uniform Donsker
classes, and the Bousquet-Koltchinskii-Panchenko theorem that the
convex hull of a uniform Donsker class is uniform Donsker. The book
will be an essential reference for mathematicians working in
infinite-dimensional central limit theorems, mathematical
statisticians, and computer scientists working in computer learning
theory. Problems are included at the end of each chapter so the
book can also be used as an advanced text.
In this new edition of a classic work on empirical processes the
author, an acknowledged expert, gives a thorough treatment of the
subject with the addition of several proved theorems not included
in the first edition, including the Bretagnolle-Massart theorem
giving constants in the Komlos-Major-Tusnady rate of convergence
for the classical empirical process, Massart's form of the
Dvoretzky-Kiefer-Wolfowitz inequality with precise constant,
Talagrand's generic chaining approach to boundedness of Gaussian
processes, a characterization of uniform Glivenko-Cantelli classes
of functions, Gine and Zinn's characterization of uniform Donsker
classes, and the Bousquet-Koltchinskii-Panchenko theorem that the
convex hull of a uniform Donsker class is uniform Donsker. The book
will be an essential reference for mathematicians working in
infinite-dimensional central limit theorems, mathematical
statisticians, and computer scientists working in computer learning
theory. Problems are included at the end of each chapter so the
book can also be used as an advanced text.
This classic textbook, now reissued, offers a clear exposition of modern probability theory and of the interplay between the properties of metric spaces and probability measures. The new edition has been made even more self-contained than before; it now includes a foundation of the real number system and the Stone-Weierstrass theorem on uniform approximation in algebras of functions. Several other sections have been revised and improved, and the comprehensive historical notes have been further amplified. A number of new exercises have been added, together with hints for solution.
This classic textbook, now reissued, offers a clear exposition of modern probability theory and of the interplay between the properties of metric spaces and probability measures. The new edition has been made even more self-contained than before; it now includes a foundation of the real number system and the Stone-Weierstrass theorem on uniform approximation in algebras of functions. Several other sections have been revised and improved, and the comprehensive historical notes have been further amplified. A number of new exercises have been added, together with hints for solution.
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