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The development of hierarchical models and Markov chain Monte Carlo
(MCMC) techniques forms one of the most profound advances in
Bayesian analysis since the 1970s and provides the basis for
advances in virtually all areas of applied and theoretical Bayesian
statistics. This volume guides the reader along a statistical
journey that begins with the basic structure of Bayesian theory,
and then provides details on most of the past and present advances
in this field. The book has a unique format. There is an
explanatory chapter devoted to each conceptual advance followed by
journal-style chapters that provide applications or further
advances on the concept. Thus, the volume is both a textbook and a
compendium of papers covering a vast range of topics. It is
appropriate for a well-informed novice interested in understanding
the basic approach, methods and recent applications. Because of its
advanced chapters and recent work, it is also appropriate for a
more mature reader interested in recent applications and
developments, and who may be looking for ideas that could spawn new
research. Hence, the audience for this unique book would likely
include academicians/practitioners, and could likely be required
reading for undergraduate and graduate students in statistics,
medicine, engineering, scientific computation, business,
psychology, bio-informatics, computational physics, graphical
models, neural networks, geosciences, and public policy. The book
honours the contributions of Sir Adrian F. M. Smith, one of the
seminal Bayesian researchers, with his papers on hierarchical
models, sequential Monte Carlo, and Markov chain Monte Carlo and
his mentoring of numerous graduate students -the chapters are
authored by prominent statisticians influenced by him. Bayesian
Theory and Applications should serve the dual purpose of a
reference book, and a textbook in Bayesian Statistics.
The development of hierarchical models and Markov chain Monte Carlo
(MCMC) techniques forms one of the most profound advances in
Bayesian analysis since the 1970s and provides the basis for
advances in virtually all areas of applied and theoretical Bayesian
statistics. This volume guides the reader along a statistical
journey that begins with the basic structure of Bayesian theory,
and then provides details on most of the past and present advances
in this field. The book has a unique format. There is an
explanatory chapter devoted to each conceptual advance followed by
journal-style chapters that provide applications or further
advances on the concept. Thus, the volume is both a textbook and a
compendium of papers covering a vast range of topics. It is
appropriate for a well-informed novice interested in understanding
the basic approach, methods and recent applications. Because of its
advanced chapters and recent work, it is also appropriate for a
more mature reader interested in recent applications and
developments, and who may be looking for ideas that could spawn new
research. Hence, the audience for this unique book would likely
include academicians/practitioners, and could likely be required
reading for undergraduate and graduate students in statistics,
medicine, engineering, scientific computation, business,
psychology, bio-informatics, computational physics, graphical
models, neural networks, geosciences, and public policy. The book
honours the contributions of Sir Adrian F. M. Smith, one of the
seminal Bayesian researchers, with his papers on hierarchical
models, sequential Monte Carlo, and Markov chain Monte Carlo and
his mentoring of numerous graduate students -the chapters are
authored by prominent statisticians influenced by him. Bayesian
Theory and Applications should serve the dual purpose of a
reference book, and a textbook in Bayesian Statistics.
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