
Robust Statistics
Theory and Methods (with R)
Wiley (Publisher)
2nd Edition
Published on 21. December 2018
Book
Hardback
464 pages
978-1-119-21468-7 (ISBN)
Description
A new edition of this popular text on robust statistics, thoroughly updated to include new and improved methods and focus on implementation of methodology using the increasingly popular open-source software R.
Classical statistics fail to cope well with outliers associated with deviations from standard distributions. Robust statistical methods take into account these deviations when estimating the parameters of parametric models, thus increasing the reliability of fitted models and associated inference. This new, second edition of Robust Statistics: Theory and Methods (with R) presents a broad coverage of the theory of robust statistics that is integrated with computing methods and applications. Updated to include important new research results of the last decade and focus on the use of the popular software package R, it features in-depth coverage of the key methodology, including regression, multivariate analysis, and time series modeling. The book is illustrated throughout by a range of examples and applications that are supported by a companion website featuring data sets and R code that allow the reader to reproduce the examples given in the book.
Unlike other books on the market, Robust Statistics: Theory and Methods (with R) offers the most comprehensive, definitive, and up-to-date treatment of the subject. It features chapters on estimating location and scale; measuring robustness; linear regression with fixed and with random predictors; multivariate analysis; generalized linear models; time series; numerical algorithms; and asymptotic theory of M-estimates.
Explains both the use and theoretical justification of robust methods
Guides readers in selecting and using the most appropriate robust methods for their problems
Features computational algorithms for the core methods
Robust statistics research results of the last decade included in this 2nd edition include: fast deterministic robust regression, finite-sample robustness, robust regularized regression, robust location and scatter estimation with missing data, robust estimation with independent outliers in variables, and robust mixed linear models.
Robust Statistics aims to stimulate the use of robust methods as a powerful tool to increase the reliability and accuracy of statistical modelling and data analysis. It is an ideal resource for researchers, practitioners, and graduate students in statistics, engineering, computer science, and physical and social sciences.
Classical statistics fail to cope well with outliers associated with deviations from standard distributions. Robust statistical methods take into account these deviations when estimating the parameters of parametric models, thus increasing the reliability of fitted models and associated inference. This new, second edition of Robust Statistics: Theory and Methods (with R) presents a broad coverage of the theory of robust statistics that is integrated with computing methods and applications. Updated to include important new research results of the last decade and focus on the use of the popular software package R, it features in-depth coverage of the key methodology, including regression, multivariate analysis, and time series modeling. The book is illustrated throughout by a range of examples and applications that are supported by a companion website featuring data sets and R code that allow the reader to reproduce the examples given in the book.
Unlike other books on the market, Robust Statistics: Theory and Methods (with R) offers the most comprehensive, definitive, and up-to-date treatment of the subject. It features chapters on estimating location and scale; measuring robustness; linear regression with fixed and with random predictors; multivariate analysis; generalized linear models; time series; numerical algorithms; and asymptotic theory of M-estimates.
Explains both the use and theoretical justification of robust methods
Guides readers in selecting and using the most appropriate robust methods for their problems
Features computational algorithms for the core methods
Robust statistics research results of the last decade included in this 2nd edition include: fast deterministic robust regression, finite-sample robustness, robust regularized regression, robust location and scatter estimation with missing data, robust estimation with independent outliers in variables, and robust mixed linear models.
Robust Statistics aims to stimulate the use of robust methods as a powerful tool to increase the reliability and accuracy of statistical modelling and data analysis. It is an ideal resource for researchers, practitioners, and graduate students in statistics, engineering, computer science, and physical and social sciences.
More details
Series
Edition
2nd edition
Language
English
Place of publication
New York
United States
Target group
Professional and scholarly
Product notice
sewn/stitched
Cloth over boards
Dimensions
Height: 236 mm
Width: 159 mm
Thickness: 30 mm
Weight
688 gr
ISBN-13
978-1-119-21468-7 (9781119214687)
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

Ricardo A. Maronna | R. Douglas Martin | Victor J. Yohai
Robust Statistics
Theory and Methods (with R)
E-Book
10/2018
2nd Edition
Wiley
€78.99
Available for download

Ricardo A. Maronna | R. Douglas Martin | Victor J. Yohai
Robust Statistics
Theory and Methods (with R)
E-Book
10/2018
2nd Edition
Wiley
€78.99
Available for download
Previous edition

Book
03/2006
Wiley
€125.50
Shipment within 10-20 days
Persons
Ricardo A. Maronna, Consultant Professor, National University of La Plata, Argentina
R. Douglas Martin, Departments of Applied Mathematics and Statistics, University of Washington, USA
Victor J. Yohai, Department of Mathematics, University of Buenos Aires, and CONICET, Argentina
Matias Salibian-Barrera, Department of Statistics, The University of British Columbia, Canada
R. Douglas Martin, Departments of Applied Mathematics and Statistics, University of Washington, USA
Victor J. Yohai, Department of Mathematics, University of Buenos Aires, and CONICET, Argentina
Matias Salibian-Barrera, Department of Statistics, The University of British Columbia, Canada
Author
Universidad Nacional de La Plata, Argentina
University of Washington, USA
University of Buenos Aires, Argentina
University of British Columbia
Content
Preface xv Preface to the First Edition xxi
About the Companion Website xxix
1 Introduction 1
2 Location and Scale 17
3 Measuring Robustness 51
4 Linear Regression 1 87
5 Linear Regression 2 115
6 Multivariate Analysis 195
7 Generalized Linear Models 271
8 Time Series 293
9 Numerical Algorithms 363
10 Asymptotic Theory of M-estimators 373
11 Description of Datasets 401
References 407
Index 423
About the Companion Website xxix
1 Introduction 1
2 Location and Scale 17
3 Measuring Robustness 51
4 Linear Regression 1 87
5 Linear Regression 2 115
6 Multivariate Analysis 195
7 Generalized Linear Models 271
8 Time Series 293
9 Numerical Algorithms 363
10 Asymptotic Theory of M-estimators 373
11 Description of Datasets 401
References 407
Index 423