Statistical Analysis with Missing Data
- Hardback | 408 pages
- 168 x 239 x 28mm | 798g
- 09 Sep 2002
- John Wiley & Sons Inc
- New York, United States
- 2nd Edition
Other books in this series
11 Jan 2013
09 Sep 2002
21 Dec 2001
01 Dec 2014
09 Oct 2012
25 Jul 2003
24 May 2019
24 Feb 2015
30 Nov 2018
11 Mar 2013
14 Dec 2015
10 Oct 1996
01 Jan 2019
08 Jan 1991
15 May 2014
Back cover copy
"An important contribution to the applied statistics literature.... I give the book high marks for unifying and making accessible much of the past and current work in this important area."
--William E. Strawderman, Rutgers University
"This book...provide[s] interesting real-life examples, stimulating end-of-chapter exercises, and up-to-date references. It should be on every applied statistician's bookshelf."
"The book should be studied in the statistical methods department in every statistical agency."
--Journal of Official Statistics
Statistical analysis of data sets with missing values is a pervasive problem for which standard methods are of limited value. The first edition of Statistical Analysis with Missing Data has been a standard reference on missing-data methods. Now, reflecting extensive developments in Bayesian methods for simulating posterior distributions, this Second Edition by two acknowledged experts on the subject offers a thoroughly up-to-date, reorganized survey of current methodology for handling missing-data problems.
Blending theory and application, authors Roderick Little and Donald Rubin review historical approaches to the subject and describe rigorous yet simple methods for multivariate analysis with missing values. They then provide a coherent theory for analysis of problems based on likelihoods derived from statistical models for the data and the missing-data mechanism and apply the theory to a wide range of important missing-data problems.
The new edition now enlarges its coverage to include:
Expanded coverage of Bayesian methodology, both theoretical and computational, and of multiple imputation Analysis of data with missing values where inferences are based on likelihoods derived from formal statistical models for the data-generating and missing-data mechanisms Applications of the approach in a variety of contexts including regression, factor analysis, contingency table analysis, time series, and sample survey inference Extensive references, examples, and exercises
Amstat News asked three review editors to rate their top five favorite books in the September 2003 issue. Statistical Analysis With Missing Data was among those chosen.
Table of contents
"...a well written and well documented text for missing data analysis..." ( Statistical Methods in Medical Research , Vol.14, No.1, 2005)
"An update to this authoritative book is indeed welcome." ( Journal of the American Statistical Association , December 2004)
"...this is an excellent book. It is well written and inspiring..." ( Statistics in Medicine , 2004; 23)
"...this second edition offers a thoroughly up-to-date, reorganized survey of of current methods for handling missing data problems..." ( Zentralblatt Math , Vol.1011, No.11, 203)
"...well written and very readable...a comprehensive, update treatment of an important topic by two of the leading researchers in the field. In summary, I highly recommend this book..." ( Technometrics , Vol. 45, No. 4, November 2003)
About Roderick J. a. Little