Multiple Imputation in Practice With Examples Using IVEware
Auteurs : Raghunathan Trivellore, Berglund Patricia A., Solenberger Peter W.
Multiple Imputation in Practice: With Examples Using IVEware provides practical guidance on multiple imputation analysis, from simple to complex problems using real and simulated data sets. Data sets from cross-sectional, retrospective, prospective and longitudinal studies, randomized clinical trials, complex sample surveys are used to illustrate both simple, and complex analyses.
Version 0.3 of IVEware, the software developed by the University of Michigan, is used to illustrate analyses. IVEware can multiply impute missing values, analyze multiply imputed data sets, incorporate complex sample design features, and be used for other statistical analyses framed as missing data problems. IVEware can be used under Windows, Linux, and Mac, and with software packages like SAS, SPSS, Stata, and R, or as a stand-alone tool.
This book will be helpful to researchers looking for guidance on the use of multiple imputation to address missing data problems, along with examples of correct analysis techniques.
1. Basic Concepts 2. Descriptive Statistics 3. Linear Models 4. Generalized Linear Model 5. Categorical Data Analysis 6. Survival Analysis 7.Structural Equation Models 8. Longitudinal Data Analysis 9. Complex Survey Data Analysis using BBDESIGN 10.Sensitivity Analysis 11. Odds and Ends. Appendices
Trivellore Raghunathan is the director of the Survey Research Center in the Institute for Social Research and professor of biostatistics in the School of Public Health at the University of Michigan. He has published numerous papers in a range of statistical and public health journals. His research interests include applied regression analysis, linear models, design of experiments, sample survey methods, and Bayesian inference.
Patricia A. Berglund is a senior research associate in the Youth and Social Indicators Program and Survey Methodology Program in the Survey Research Center at the University of Michigan’s Institute for Social Research.
Date de parution : 12-2020
15.6x23.4 cm
Date de parution : 07-2018
15.6x23.4 cm
Thèmes de Multiple Imputation in Practice :
Mots-clés :
Data Sets; Missing Data; Multiple Imputation; sequental regression; Imputation Model; stata; Imputed Data Sets; sas; Data Set; spss; PROC MIANALYZE; R; Impute Missing Data; Patricia A; Berglund; Proc Print Data; Peter W; Solenberger; Missing Data Mechanisms; Missing Values; Ods Output ParameterEstimates; SAS Data Set; Regression Model; Complex Sample Design Features; PROC CATMOD; MAR Assumption; Log Linear Model; SEM Model; Censor Variable; CRC Press Website; Multinomial Logistic Regression; Proc Sgplot Data; Pattern Mixture Model; Head Wages