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This monograph provides and explains the probability theory of geometric graphs. Applications of the theory include communications networks, classification, spatial statistics, epidemiology, astrophysics and neural networks.
The Poisson process, a core object in modern probability, enjoys a
richer theory than is sometimes appreciated. This volume develops
the theory in the setting of a general abstract measure space,
establishing basic results and properties as well as certain
advanced topics in the stochastic analysis of the Poisson process.
Also discussed are applications and related topics in stochastic
geometry, including stationary point processes, the Boolean model,
the Gilbert graph, stable allocations, and hyperplane processes.
Comprehensive, rigorous, and self-contained, this text is ideal for
graduate courses or for self-study, with a substantial number of
exercises for each chapter. Mathematical prerequisites, mainly a
sound knowledge of measure-theoretic probability, are kept in the
background, but are reviewed comprehensively in the appendix. The
authors are well-known researchers in probability theory;
especially stochastic geometry. Their approach is informed both by
their research and by their extensive experience in teaching at
undergraduate and graduate levels.
This book is a collection of topical survey articles by leading
researchers in the fields of applied analysis and probability
theory, working on the mathematical description of growth
phenomena. Particular emphasis is on the interplay of the two
fields, with articles by analysts being accessible for researchers
in probability, and vice versa. Mathematical methods discussed in
the book comprise large deviation theory, lace expansion, harmonic
multi-scale techniques and homogenisation of partial differential
equations. Models based on the physics of individual particles are
discussed alongside models based on the continuum description of
large collections of particles, and the mathematical theories are
used to describe physical phenomena such as droplet formation,
Bose-Einstein condensation, Anderson localization, Ostwald
ripening, or the formation of the early universe. The combination
of articles from the two fields of analysis and probability is
highly unusual and makes this book an important resource for
researchers working in all areas close to the interface of these
fields.
The Poisson process, a core object in modern probability, enjoys a
richer theory than is sometimes appreciated. This volume develops
the theory in the setting of a general abstract measure space,
establishing basic results and properties as well as certain
advanced topics in the stochastic analysis of the Poisson process.
Also discussed are applications and related topics in stochastic
geometry, including stationary point processes, the Boolean model,
the Gilbert graph, stable allocations, and hyperplane processes.
Comprehensive, rigorous, and self-contained, this text is ideal for
graduate courses or for self-study, with a substantial number of
exercises for each chapter. Mathematical prerequisites, mainly a
sound knowledge of measure-theoretic probability, are kept in the
background, but are reviewed comprehensively in the appendix. The
authors are well-known researchers in probability theory;
especially stochastic geometry. Their approach is informed both by
their research and by their extensive experience in teaching at
undergraduate and graduate levels.
The theory of random graphs is a vital part of the education of any
researcher entering the fascinating world of combinatorics.
However, due to their diverse nature, the geometric and structural
aspects of the theory often remain an obscure part of the formative
study of young combinatorialists and probabilists. Moreover, the
theory itself, even in its most basic forms, is often considered
too advanced to be part of undergraduate curricula, and those who
are interested usually learn it mostly through self-study, covering
a lot of its fundamentals but little of the more recent
developments. This book provides a self-contained and concise
introduction to recent developments and techniques for classical
problems in the theory of random graphs. Moreover, it covers
geometric and topological aspects of the theory and introduces the
reader to the diversity and depth of the methods that have been
devised in this context.
The theory of random graphs is a vital part of the education of any
researcher entering the fascinating world of combinatorics.
However, due to their diverse nature, the geometric and structural
aspects of the theory often remain an obscure part of the formative
study of young combinatorialists and probabilists. Moreover, the
theory itself, even in its most basic forms, is often considered
too advanced to be part of undergraduate curricula, and those who
are interested usually learn it mostly through self-study, covering
a lot of its fundamentals but little of the more recent
developments. This book provides a self-contained and concise
introduction to recent developments and techniques for classical
problems in the theory of random graphs. Moreover, it covers
geometric and topological aspects of the theory and introduces the
reader to the diversity and depth of the methods that have been
devised in this context.
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