A Course in Large-Sample and High-Dimensional Theory
Zhiqiang Tan(Author)
Chapman and Hall (Publisher)
Will be published approx. on 10. August 2026
244 pages
E-Book
978-1-040-84302-4 (ISBN)
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Description
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This book provides a systematic treatment of two central regimes in statistical theory: classical large-sample theory for M- and Z-estimation with a fixed number of parameters, and high-dimensional theory where the number of parameters can be comparable to or larger than the sample size. While the former was developed earlier and remains fundamental, high-dimensional statistical theory has become an indispensable part of modern statistics.
Classical large-sample theory and high-dimensional theory are typically compartmentalized into separate books and courses, which can make it difficult for readers to see how they relate. To foster learning, this book brings them together in a compact and integrated manner, highlighting both their differences and their shared underlying structures.
Assuming basic knowledge of mathematics and statistics, the book is intended primarily as a graduate textbook for students and researchers in Statistics, Data Science, and related fields. It serves as a useful resource for those wishing to study classical asymptotics and modern high-dimensional theory as cohesive parts of a broader statistical framework.
Key Features:
Focuses on core, representative topics in classical and modern statistical theory, emphasizing essential ideas that help readers extend their understanding to related areas.
Treats important results that are otherwise scattered across research papers and monographs in a coherent and carefully organized manner.
Provides direct, self-contained proofs of main results while assuming only basic concepts and results from probability and real analysis.
Reinforces learning with end-of-chapter exercises as well as questions and exercises integrated into the main text.
Classical large-sample theory and high-dimensional theory are typically compartmentalized into separate books and courses, which can make it difficult for readers to see how they relate. To foster learning, this book brings them together in a compact and integrated manner, highlighting both their differences and their shared underlying structures.
Assuming basic knowledge of mathematics and statistics, the book is intended primarily as a graduate textbook for students and researchers in Statistics, Data Science, and related fields. It serves as a useful resource for those wishing to study classical asymptotics and modern high-dimensional theory as cohesive parts of a broader statistical framework.
Key Features:
Focuses on core, representative topics in classical and modern statistical theory, emphasizing essential ideas that help readers extend their understanding to related areas.
Treats important results that are otherwise scattered across research papers and monographs in a coherent and carefully organized manner.
Provides direct, self-contained proofs of main results while assuming only basic concepts and results from probability and real analysis.
Reinforces learning with end-of-chapter exercises as well as questions and exercises integrated into the main text.
More details
Series
Language
English
Place of publication
London
United Kingdom
Publishing group
Taylor & Francis Ltd
Target group
Professional and scholarly
Product notice
Reflowable
Illustrations
2 Line drawings, color; 13 Line drawings, black and white; 2 Illustrations, color; 13 Illustrations, black and white
ISBN-13
978-1-040-84302-4 (9781040843024)
Copyright in bibliographic data is held by Nielsen Book Services Limited or its licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Zhiqiang Tan
A Course in Large-Sample and High-Dimensional Theory
Book
approx. 08/2026
1st Edition
Chapman & Hall/CRC Texts in Statistical Science
€113.50
Not yet published
Person
Zhiqiang Tan is a Distinguished Professor in the Department of Statistics at Rutgers University. His research and teaching interests include Monte Carlo methods, causal inference, statistical learning, and related areas. He is a Fellow of the American Statistical Association, a Fellow of the Institute of Mathematical Statistics, and an Elected Member of the International Statistical Institute.
Content
Preface Author Biography 1 Basic convergence theory 2 Classical theory for M- and Z-estimation 3 Concentration inequalities 4 High-dimensional linear regression 5 High-dimensional generalized linear regression 6 High-dimensional inference for regression coefficients Bibliography Index
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