Handbook of Missing Data Methodology

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advanced missing data techniques
Auxiliary Covariates
Category=JMA
Category=JMB
Category=PBT
Category=PS
clinical trial statistics
Doubly Robust
Dropout Model
empirical research methods
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eq_isMigrated=2
eq_nobargain
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eq_science
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Full Data Model
graduate level statistics
imputation
Imputation Model
Imputed Datasets
inverse
inverse probability weighting
IPW
IPW Estimator
IPWA Estimator
Latent Class Mixture Model
likelihood and Bayesian methods
Linear Mixed Model
Longitudinal Responses
managing missing data in clinical trials and surveys
MAR Assumption
mechanisms
Missing Data
Missing Data Mechanism
missing data mechanisms
missing data methods in empirical research
Missing Values
mixture
model
models
Monotone Missingness
multiple
Multiple Imputation
multiple imputation methods
NMAR Assumption
NMAR Mechanism
NMAR Model
parameter
parametric and semi-parametric models with missing data
pattern
Pattern Mixture Models
Semi-parametric Models
Semiparametric Model
sensitivity analysis
shared
Shared Parameter Models
statistical inference
survey data analysis

Product details

  • ISBN 9780367739294
  • Weight: 1110g
  • Dimensions: 178 x 254mm
  • Publication Date: 18 Dec 2020
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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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.

Geert Molenberghs, Garrett Fitzmaurice, Michael G. Kenward, Anastasios Tsiatis, Geert Verbeke