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Features: A concise yet rigorous introduction to a one-semester
course on mathematical statistics Covers all the key topics Assumes
a solid background in mathematics and probability Numerous examples
illustrate the topics Many exercises enhance understanding of the
material and enable course use
A graphical model is a statistical model that is represented by a
graph. The factorization properties underlying graphical models
facilitate tractable computation with multivariate distributions,
making the models a valuable tool with a plethora of applications.
Furthermore, directed graphical models allow intuitive causal
interpretations and have become a cornerstone for causal inference.
While there exist a number of excellent books on graphical models,
the field has grown so much that individual authors can hardly
cover its entire scope. Moreover, the field is interdisciplinary by
nature. Through chapters by leading researchers from different
areas, this handbook provides a broad and accessible overview of
the state of the art. Features: Contributions by leading
researchers from a range of disciplines Structured in five parts,
covering foundations, computational aspects, statistical inference,
causal inference, and applications Balanced coverage of concepts,
theory, methods, examples, and applications Chapters can be read
mostly independently, while cross-references highlight connections
The handbook is targeted at a wide audience, including graduate
students, applied researchers, and experts in graphical models.
Graphical models in their modern form have been around since the
late 1970s and appear today in many areas of the sciences. Along
with the ongoing developments of graphical models, a number of
different graphical modeling software programs have been written
over the years. In recent years many of these software developments
have taken place within the R community, either in the form of new
packages or by providing an R interface to existing software. This
book attempts to give the reader a gentle introduction to graphical
modeling using R and the main features of some of these packages.
In addition, the book provides examples of how more advanced
aspects of graphical modeling can be represented and handled within
R. Topics covered in the seven chapters include graphical models
for contingency tables, Gaussian and mixed graphical models,
Bayesian networks and modeling high dimensional data.
A graphical model is a statistical model that is represented by a
graph. The factorization properties underlying graphical models
facilitate tractable computation with multivariate distributions,
making the models a valuable tool with a plethora of applications.
Furthermore, directed graphical models allow intuitive causal
interpretations and have become a cornerstone for causal inference.
While there exist a number of excellent books on graphical models,
the field has grown so much that individual authors can hardly
cover its entire scope. Moreover, the field is interdisciplinary by
nature. Through chapters by leading researchers from different
areas, this handbook provides a broad and accessible overview of
the state of the art. Key features: * Contributions by leading
researchers from a range of disciplines * Structured in five parts,
covering foundations, computational aspects, statistical inference,
causal inference, and applications * Balanced coverage of concepts,
theory, methods, examples, and applications * Chapters can be read
mostly independently, while cross-references highlight connections
The handbook is targeted at a wide audience, including graduate
students, applied researchers, and experts in graphical models.
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