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Missing data affect nearly every discipline by complicating the
statistical analysis of collected data. But since the 1990s, there
have been important developments in the statistical methodology for
handling missing data. Written by renowned statisticians in this
area, Handbook of Missing Data Methodology presents many
methodological advances and the latest applications of missing data
methods in empirical research. Divided into six parts, the handbook
begins by establishing notation and terminology. It reviews the
general taxonomy of missing data mechanisms and their implications
for analysis and offers a historical perspective on early methods
for handling missing data. The following three parts cover various
inference paradigms when data are missing, including likelihood and
Bayesian methods; semi-parametric methods, with particular emphasis
on inverse probability weighting; and multiple imputation methods.
The next part of the book focuses on a range of approaches that
assess the sensitivity of inferences to alternative, routinely
non-verifiable assumptions about the missing data process. The
final part discusses special topics, such as missing data in
clinical trials and sample surveys as well as approaches to model
diagnostics in the missing data setting. In each part, an
introduction provides useful background material and an overview to
set the stage for subsequent chapters. Covering both established
and emerging methodologies for missing data, this book sets the
scene for future research. It provides the framework for readers to
delve into research and practical applications of missing data
methods.
Design and Analysis of Cross-Over Trials is concerned with a
specific kind of comparative trial known as the cross-over trial,
in which subjects receive different sequences of treatments. Such
trials are widely used in clinical and medical research, and in
other diverse areas such as veterinary science, psychology, sports
science, and agriculture. The first edition of this book was the
first to be wholly devoted to the subject. The second edition was
revised to mirror growth and development in areas where the design
remained in widespread use and new areas where it had grown in
importance. This new Third Edition: Contains seven new chapters
written in the form of short case studies that address
re-estimating sample size when testing for average bioequivalence,
fitting a nonlinear dose response function, estimating a dose to
take forward from phase two to phase three, establishing proof of
concept, and recalculating the sample size using conditional power
Employs the R package Crossover, specially created to accompany the
book and provide a graphical user interface for locating designs in
a large catalog and for searching for new designs Includes updates
regarding the use of period baselines and the analysis of data from
very small trials Reflects the availability of new procedures in
SAS, particularly proc glimmix Presents the SAS procedure proc mcmc
as an alternative to WinBUGS for Bayesian analysis Complete with
real data and downloadable SAS code, Design and Analysis of
Cross-Over Trials, Third Edition provides a practical understanding
of the latest methods along with the necessary tools for
implementation.
Multiple Imputation and its Application The most up-to-date edition
of a bestselling guide to analyzing partially observed data In this
comprehensively revised Second Edition of Multiple Imputation and
its Application, a team of distinguished statisticians delivers an
overview of the issues raised by missing data, the rationale for
multiple imputation as a solution, and the practicalities of
applying it in a multitude of settings. With an accessible and
carefully structured presentation aimed at quantitative
researchers, Multiple Imputation and its Application is illustrated
with a range of examples and offers key mathematical details. The
book includes a wide range of theoretical and computer-based
exercises, tested in the classroom, which are especially useful for
users of R or Stata. Readers will find: A comprehensive overview of
one of the most effective and popular methodologies for dealing
with incomplete data sets Careful discussion of key concepts A
range of examples illustrating the key ideas Practical advice on
using multiple imputation Exercises and examples designed for use
in the classroom and/or private study Written for applied
researchers looking to use multiple imputation with confidence, and
for methods researchers seeking an accessible overview of the
topic, Multiple Imputation and its Application will also earn a
place in the libraries of graduate students undertaking
quantitative analyses.
Missing data affect nearly every discipline by complicating the
statistical analysis of collected data. But since the 1990s, there
have been important developments in the statistical methodology for
handling missing data. Written by renowned statisticians in this
area, Handbook of Missing Data Methodology presents many
methodological advances and the latest applications of missing data
methods in empirical research. Divided into six parts, the handbook
begins by establishing notation and terminology. It reviews the
general taxonomy of missing data mechanisms and their implications
for analysis and offers a historical perspective on early methods
for handling missing data. The following three parts cover various
inference paradigms when data are missing, including likelihood and
Bayesian methods; semi-parametric methods, with particular emphasis
on inverse probability weighting; and multiple imputation methods.
The next part of the book focuses on a range of approaches that
assess the sensitivity of inferences to alternative, routinely
non-verifiable assumptions about the missing data process. The
final part discusses special topics, such as missing data in
clinical trials and sample surveys as well as approaches to model
diagnostics in the missing data setting. In each part, an
introduction provides useful background material and an overview to
set the stage for subsequent chapters. Covering both established
and emerging methodologies for missing data, this book sets the
scene for future research. It provides the framework for readers to
delve into research and practical applications of missing data
methods.
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