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Based on the authors lecture notes, Introduction to the Theory of
Statistical Inference presents concise yet complete coverage of
statistical inference theory, focusing on the fundamental classical
principles. Suitable for a second-semester undergraduate course on
statistical inference, the book offers proofs to support the
mathematics. It illustrates core concepts using cartoons and
provides solutions to all examples and problems. Highlights Basic
notations and ideas of statistical inference are explained in a
mathematically rigorous, but understandable, form Classroom-tested
and designed for students of mathematical statistics Examples,
applications of the general theory to special cases, exercises, and
figures provide a deeper insight into the material Solutions
provided for problems formulated at the end of each chapter
Combines the theoretical basis of statistical inference with a
useful applied toolbox that includes linear models Theoretical,
difficult, or frequently misunderstood problems are marked The book
is aimed at advanced undergraduate students, graduate students in
mathematics and statistics, and theoretically-interested students
from other disciplines. Results are presented as theorems and
corollaries. All theorems are proven and important statements are
formulated as guidelines in prose. With its multipronged and
student-tested approach, this book is an excellent introduction to
the theory of statistical inference.
Based on the authors' lecture notes, Introduction to the Theory of
Statistical Inference presents concise yet complete coverage of
statistical inference theory, focusing on the fundamental classical
principles. Suitable for a second-semester undergraduate course on
statistical inference, the book offers proofs to support the
mathematics. It illustrates core concepts using cartoons and
provides solutions to all examples and problems. Highlights Basic
notations and ideas of statistical inference are explained in a
mathematically rigorous, but understandable, form Classroom-tested
and designed for students of mathematical statistics Examples,
applications of the general theory to special cases, exercises, and
figures provide a deeper insight into the material Solutions
provided for problems formulated at the end of each chapter
Combines the theoretical basis of statistical inference with a
useful applied toolbox that includes linear models Theoretical,
difficult, or frequently misunderstood problems are marked The book
is aimed at advanced undergraduate students, graduate students in
mathematics and statistics, and theoretically-interested students
from other disciplines. Results are presented as theorems and
corollaries. All theorems are proven and important statements are
formulated as guidelines in prose. With its multipronged and
student-tested approach, this book is an excellent introduction to
the theory of statistical inference.
Presents the main ideas of computer-intensive statistical methods
Gives the algorithms for all the methods Uses various plots and
illustrations for explaining the main ideas Features the
theoretical backgrounds of the main methods. Includes R codes for
the methods and examples
Presents the main ideas of computer-intensive statistical methods
Gives the algorithms for all the methods Uses various plots and
illustrations for explaining the main ideas Features the
theoretical backgrounds of the main methods. Includes R codes for
the methods and examples
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