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This book describes the properties of stochastic probabilistic
models and develops the applied mathematics of stochastic point
processes. It is useful to students and research workers in
probability and statistics and also to research workers wishing to
apply stochastic point processes.
Spatial point processes play a fundamental role in spatial statistics and today they are a very active area of research with many new and emerging applications. Although published works address different aspects of spatial point processes, most of the classical literature deals only with nonparametric methods, and nowhere can one find a comprehensive treatment of the theory and applications of simulation-based inference. Written by researchers at the top of the field, this book collects and unifies recent theoretical advances and examples of applications. The authors examine Markov chain Monte Carlo (MCMC) algorithms and explore one of the most important recent developments in MCMC-perfect simulation procedures.
The Likelihood plays a key role in both introducing general notions
of statistical theory, and in developing specific methods. This
book introduces likelihood-based statistical theory and related
methods from a classical viewpoint, and demonstrates how the main
body of currently used statistical techniques can be generated from
a few key concepts, in particular the likelihood. Focusing on those
methods, which have both a solid theoretical background and
practical relevance, the author gives formal justification of the
methods used and provides numerical examples with real data.
Statistical Methods for Spatio-Temporal Systems presents current
statistical research issues on spatio-temporal data modeling and
will promote advances in research and a greater understanding
between the mechanistic and the statistical modeling communities.
Contributed by leading researchers in the field, each
self-contained chapter starts with an introduction of the topic and
progresses to recent research results. Presenting specific examples
of epidemic data of bovine tuberculosis, gastroenteric disease, and
the U.K. foot-and-mouth outbreak, the first chapter uses stochastic
models, such as point process models, to provide the probabilistic
backbone that facilitates statistical inference from data. The next
chapter discusses the critical issue of modeling random growth
objects in diverse biological systems, such as bacteria colonies,
tumors, and plant populations. The subsequent chapter examines data
transformation tools using examples from ecology and air quality
data, followed by a chapter on space-time covariance functions. The
contributors then describe stochastic and statistical models that
are used to generate simulated rainfall sequences for hydrological
use, such as flood risk assessment. The final chapter explores
Gaussian Markov random field specifications and Bayesian
computational inference via Gibbs sampling and Markov chain Monte
Carlo, illustrating the methods with a variety of data examples,
such as temperature surfaces, dioxin concentrations, ozone
concentrations, and a well-established deterministic dynamical
weather model.
Ever since the introduction by Rao in 1945 of the Fisher
information metric on a family of probability distributions there
has been interest among statisticians in the application of
differential geometry to statistics. This interest has increased
rapidly in the last couple of decades with the work of a large
number of researchers. Until now an impediment to the spread of
these ideas into the wider community of statisticians is the lack
of a suitable text introducing the modern co-ordinate free approach
to differential geometry in a manner accessible to statisticians.
Statistical Methods for Spatio-Temporal Systems presents current
statistical research issues on spatio-temporal data modeling and
will promote advances in research and a greater understanding
between the mechanistic and the statistical modeling communities.
Contributed by leading researchers in the field, each
self-contained chapter starts with an introduction of the topic and
progresses to recent research results. Presenting specific examples
of epidemic data of bovine tuberculosis, gastroenteric disease, and
the U.K. foot-and-mouth outbreak, the first chapter uses stochastic
models, such as point process models, to provide the probabilistic
backbone that facilitates statistical inference from data. The next
chapter discusses the critical issue of modeling random growth
objects in diverse biological systems, such as bacteria colonies,
tumors, and plant populations. The subsequent chapter examines data
transformation tools using examples from ecology and air quality
data, followed by a chapter on space-time covariance functions. The
contributors then describe stochastic and statistical models that
are used to generate simulated rainfall sequences for hydrological
use, such as flood risk assessment. The final chapter explores
Gaussian Markov random field specifications and Bayesian
computational inference via Gibbs sampling and Markov chain Monte
Carlo, illustrating the methods with a variety of data examples,
such as temperature surfaces, dioxin concentrations, ozone
concentrations, and a well-established deterministic dynamical
weather model.
The Likelihood plays a key role in both introducing general notions of statistical theory, and in developing specific methods. This book introduces likelihood-based statistical theory and related methods from a classical viewpoint, and demonstrates how the main body of currently used statistical techniques can be generated from a few key concepts, in particular the likelihood.
Focusing on those methods, which have both a solid theoretical background and practical relevance, the author gives formal justification of the methods used and provides numerical examples with real data.
Infectious disease accounts for more death and disability worldwide
than either noninfectious disease or injury. This book contains a
number of different quantitative approaches to understanding the
patterns of such diseases in populations, and the design of control
strategies to lessen their effect. The papers are written by
experts with varied mathematical expertise and involvement in
biological, medical and social sciences. The volume increases
interaction between specialties by describing research on many
infectious diseases that affect humans, including viral diseases,
such as measles and AIDS, and tropical parasitic infections.
Sections deal with problems relating to transmissible diseases with
long development times (such as AIDS); vaccination strategies; the
consequences of treatment interventions; the dynamics of immunity;
heterogeneity of populations; and prediction. On each topic, the
editors have chosen papers that bring together contrasting
approaches via the development of theoretical results, the use of
relevant knowledge from applied fields, and the analysis of data.
Infectious disease accounts for more death and disability worldwide
than either noninfectious disease or injury. This book contains a
number of different quantitative approaches to understanding the
patterns of such diseases in populations, and the design of control
strategies to lessen their effect. The papers are written by
experts with varied mathematical expertise and involvement in
biological, medical and social sciences. The volume increases
interaction between specialties by describing research on many
infectious diseases that affect humans, including viral diseases,
such as measles and AIDS, and tropical parasitic infections.
Sections deal with problems relating to transmissible diseases with
long development times (such as AIDS); vaccination strategies; the
consequences of treatment interventions; the dynamics of immunity;
heterogeneity of populations; and prediction. On each topic, the
editors have chosen papers that bring together contrasting
approaches via the development of theoretical results, the use of
relevant knowledge from applied fields, and the analysis of data.
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Set-Indexed Martingales (Hardcover)
B.G. Ivanoff; Series edited by D.R. Cox; Ely Merzbach; Series edited by N. Reid, Valerie Isham, …
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R3,841
R3,334
Discovery Miles 33 340
Save R507 (13%)
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Ships in 12 - 17 working days
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Set-Indexed Martingales offers a unique, comprehensive development
of a general theory of Martingales indexed by a family of sets. The
authors establish-for the first time-an appropriate framework that
provides a suitable structure for a theory of Martingales with
enough generality to include many interesting examples. Developed
from first principles, the theory brings together the theories of
Martingales with a directed index set and set-indexed stochastic
processes. Part One presents several classical concepts extended to
this setting, including: stopping, predictability, Doob-Meyer
decompositions, martingale characterizations of the set-indexed
Poisson process, and Brownian motion. Part Two addresses
convergence of sequences of set-indexed processes and introduces
functional convergence for processes whose sample paths live in a
Skorokhod-type space and semi-functional convergence for processes
whose sample paths may be badly behaved. Completely self-contained,
the theoretical aspects of this work are rich and promising. With
its many important applications-especially in the theory of spatial
statistics and in stochastic geometry- Set Indexed Martingales will
undoubtedly generate great interest and inspire further research
and development of the theory and applications.
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