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This monograph will provide an in-depth mathematical treatment of
modern multiple test procedures controlling the false discovery
rate (FDR) and related error measures, particularly addressing
applications to fields such as genetics, proteomics, neuroscience
and general biology. The book will also include a detailed
description how to implement these methods in practice. Moreover
new developments focusing on non-standard assumptions are also
included, especially multiple tests for discrete data. The book
primarily addresses researchers and practitioners but will also be
beneficial for graduate students.
This textbook provides a self-contained presentation of the main
concepts and methods of nonparametric statistical testing, with a
particular focus on the theoretical foundations of goodness-of-fit
tests, rank tests, resampling tests, and projection tests. The
substitution principle is employed as a unified approach to the
nonparametric test problems discussed. In addition to mathematical
theory, it also includes numerous examples and computer
implementations. The book is intended for advanced undergraduate,
graduate, and postdoc students as well as young researchers.
Readers should be familiar with the basic concepts of mathematical
statistics typically covered in introductory statistics courses.
This textbook provides a unified and self-contained presentation of
the main approaches to and ideas of mathematical statistics. It
collects the basic mathematical ideas and tools needed as a basis
for more serious study or even independent research in statistics.
The majority of existing textbooks in mathematical statistics
follow the classical asymptotic framework. Yet, as modern
statistics has changed rapidly in recent years, new methods and
approaches have appeared. The emphasis is on finite sample
behavior, large parameter dimensions, and model misspecifications.
The present book provides a fully self-contained introduction to
the world of modern mathematical statistics, collecting the basic
knowledge, concepts and findings needed for doing further research
in the modern theoretical and applied statistics. This textbook is
primarily intended for graduate and postdoc students and young
researchers who are interested in modern statistical methods.
Coherent treatment of a variety of approaches to multiple
comparisons Broad coverage of topics, with contributions by
internationally leading experts Detailed treatment of applications
in medicine and life sciences Suitable for researchers, lecturers /
students, and practitioners
This textbook provides a self-contained presentation of the main
concepts and methods of nonparametric statistical testing, with a
particular focus on the theoretical foundations of goodness-of-fit
tests, rank tests, resampling tests, and projection tests. The
substitution principle is employed as a unified approach to the
nonparametric test problems discussed. In addition to mathematical
theory, it also includes numerous examples and computer
implementations. The book is intended for advanced undergraduate,
graduate, and postdoc students as well as young researchers.
Readers should be familiar with the basic concepts of mathematical
statistics typically covered in introductory statistics courses.
This textbook provides a unified and self-contained presentation of
the main approaches to and ideas of mathematical statistics. It
collects the basic mathematical ideas and tools needed as a basis
for more serious study or even independent research in statistics.
The majority of existing textbooks in mathematical statistics
follow the classical asymptotic framework. Yet, as modern
statistics has changed rapidly in recent years, new methods and
approaches have appeared. The emphasis is on finite sample
behavior, large parameter dimensions, and model misspecifications.
The present book provides a fully self-contained introduction to
the world of modern mathematical statistics, collecting the basic
knowledge, concepts and findings needed for doing further research
in the modern theoretical and applied statistics. This textbook is
primarily intended for graduate and postdoc students and young
researchers who are interested in modern statistical methods.
This monograph will provide an in-depth mathematical treatment of
modern multiple test procedures controlling the false discovery
rate (FDR) and related error measures, particularly addressing
applications to fields such as genetics, proteomics, neuroscience
and general biology. The book will also include a detailed
description how to implement these methods in practice. Moreover
new developments focusing on non-standard assumptions are also
included, especially multiple tests for discrete data. The book
primarily addresses researchers and practitioners but will also be
beneficial for graduate students.
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