
In All Likelihood
Statistical Modelling and Inference Using Likelihood
Yudi Pawitan(Author)
Oxford University Press
2nd Edition
Will be published approx. on 31. March 2026
Book
Hardback
544 pages
978-0-19-895092-9 (ISBN)
Description
This new, updated second edition of In All Likelihood explores the central role of likelihood in a wide spectrum of statistical problems, ranging from simple comparisons-such as evaluating accident rates between two groups-to sophisticated analyses involving generalized linear models and semiparametric methods. Rather than treating likelihood merely as a tool for point estimation, the book highlights its broader value as a foundational framework for constructing, understanding and computational implementation of statistical models. It emphasizes how likelihood perspectives inform model development, assessment, and inference in a cohesive and intuitive way.
While grounded in essential mathematical theory, the book adopts an informal and accessible approach, using heuristic reasoning and illustrative, realistic examples to convey key ideas. It avoids overly contrived problems that yield to theoretically clean and closed-form solutions, instead embracing more realistic and complex real-world data analysis made tractable by modern computing resources. This perspective helps focus attention on the statistical reasoning behind model choice and interpretation.
The text also integrates a wide range of modern topics that extend classical likelihood theory, including generalized and hierarchical generalized linear models, nonparametric smoothing techniques, robust methods, the EM algorithm, and empirical likelihood. Suitable for students, researchers, and practitioners, this book provides both foundational insights and contemporary perspectives on likelihood-based statistical modelling.
While grounded in essential mathematical theory, the book adopts an informal and accessible approach, using heuristic reasoning and illustrative, realistic examples to convey key ideas. It avoids overly contrived problems that yield to theoretically clean and closed-form solutions, instead embracing more realistic and complex real-world data analysis made tractable by modern computing resources. This perspective helps focus attention on the statistical reasoning behind model choice and interpretation.
The text also integrates a wide range of modern topics that extend classical likelihood theory, including generalized and hierarchical generalized linear models, nonparametric smoothing techniques, robust methods, the EM algorithm, and empirical likelihood. Suitable for students, researchers, and practitioners, this book provides both foundational insights and contemporary perspectives on likelihood-based statistical modelling.
Reviews / Votes
9780199671229 This is a splendid book with its contents thoroughly covering all likelihood ... Statements are firm, and explanations are full and clear. This book may be used as a reference work. It is strongly recommended as an academic library volume, and individually for statistics lecturers, advanced students, and researchers. * The Mathematical Gazette * To those of us to whom it is a continuing irritation to be told that there are only two kinds of statisticians, freqentist and Bayesian, this book will come as an enormous relief ... a remarkable book, which deserves the widest distribution; I hope it will gain many converts to the likelihood school. * Biometrics *More details
Series
Edition
2nd Revised edition
Language
English
Place of publication
Oxford
United Kingdom
Target group
College/higher education
Edition type
Revised edition
Product notice
sewn/stitched
Cloth over boards
Illustrations
30 b/w figures
Dimensions
Height: 240 mm
Width: 162 mm
Thickness: 32 mm
Weight
1084 gr
ISBN-13
978-0-19-895092-9 (9780198950929)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions
Book
03/2026
2nd Edition
Oxford University Press
€61.00
Shipment within 15-20 days
Person
Yudi Pawitan graduated with a PhD in Statistics in 1987 from the University of California at Davis and has been Professor of Biostatistics since 2001 at the Department of Medical Epidemiology and Biostatistics, Karolinska Institutet, Stockholm, Sweden. He has worked in many areas of statistical applications, including time series analyses, medical imaging, and modelling and analysis of high-throughput molecular data. He has published more than 200 peer-reviewed research papers, split about equally between methodology and applied publications. He is co-author of the monograph Generalized Linear Models with Random Effects (2017) together with Youngjo Lee and John Nelder, which covers likelihood-based statistical modelling and inference in hierarchical GLMs. More recently, together with Youngjo Lee, he published Philosophies, Puzzles and Paradoxes, a book on statistical philosophy.
Author
ProfessorProfessor, Department of Medical Epidemiology and Biostatistics, Karolinska Insitutet
Content
1: Introduction
2: Elements of likelihood in inference
3: More properties of likelihood
4: Basic models and simple applications
5: Frequentist properties
6: Modelling relationships: regression models
7: Evidence and the likelihood principle*
8: Score function and Fisher information
9: Large-sample results
10: Dealing with nuisance parameters
11: Complex data structures
12: EM Algorithm
13: Robustness of likelihood specification
14: Estimating equations and quasi-likelihood
15: Empirical likelihood
16: Likelihood of random parameters
17: Random and mixed effects models
18: Nonparametric smoothing
Bibliography
Index
2: Elements of likelihood in inference
3: More properties of likelihood
4: Basic models and simple applications
5: Frequentist properties
6: Modelling relationships: regression models
7: Evidence and the likelihood principle*
8: Score function and Fisher information
9: Large-sample results
10: Dealing with nuisance parameters
11: Complex data structures
12: EM Algorithm
13: Robustness of likelihood specification
14: Estimating equations and quasi-likelihood
15: Empirical likelihood
16: Likelihood of random parameters
17: Random and mixed effects models
18: Nonparametric smoothing
Bibliography
Index