Product Key Features
Number of Pages562 Pages
Publication NameMultilevel and Longitudinal Modeling Using Stata, Second Edition
LanguageEnglish
Publication Year2008
SubjectProbability & Statistics / General, General, Research, Statistics
TypeTextbook
Subject AreaMathematics, Social Science
AuthorSophia Rabe-Hesketh, Anders Skrondal
Additional Product Features
Edition Number2
Intended AudienceScholarly & Professional
Reviews"… a considerably expanded version, nearly double the size of the original. Much of the added material serves to delineate more clearly between statistics and software. … throughout the book, separate sections and subsections entitled "Estimation with Stata" help to separate the discussion of the models from the discussion of the fitting of the models using Stata. This improves the readability of the book and opens it up to a potentially broader audience." -Biometrics, December 2008 "… I will replace my first edition with this one and keep it … on my shelf as a reference. I also envision using it as a primary text for a longitudinal regression models course at the advanced undergraduate or master's level. Finally, I can imagine using it as a tutorial in regression modeling using Stata and using it as an accessible introduction to more advanced methods. The authors have provided a well-rounded and complete approach to model-fitting and interpretation of an important family of models. Once again, they are to be commended for helping foster the appropriate use of these regression models." -The Stata Journal, 2008 Praise for the First Edition All too often computer manuals leave off … important aspects of an analysis, but the authors have been careful to provide a well-rounded and complete approach to model fitting and interpretation. -American Statistician, August 2006 This is a useful reference source for researchers involved with multilevel modeling. It gives a fairly comprehensive treatment of methods for analysis of multilevel data, with a particular focus on random effects models. Rabe-Hesketh and Skrondal's work would also be quite helpful as an adjunct text for courses on multilevel modeling. It could serve as a stand-alone text for courses that focus on applications and implementation of the methods… . One of the appealing features of the book is the use of interesting data sets throughout to illustrate the application of the methods. In addition to the data sets used in the text, many more data sets form the bases of interesting exercises provided after each chapter. All of the data sets can be freely downloaded from a website provided by the authors. Another useful feature is the detailed Stata commands for all the results presented, which will allow the reader to easily conduct the analyses on their own data sets. A strength of the book is the clear and detailed explanations of how to interpret all the models presented; the graphical depictions of the models are particularly helpful in this regard. … -Brian Leroux (University of Washington), Statistics in Medicine, July 2008
IllustratedYes
Table Of ContentPreface Linear Variance-Components Models Introduction How reliable are expiratory flow measurements? The variance-components model Modeling the Mini Wright measurements Estimation methods Assigning values to the random intercepts Linear Random-Intercept Models Introduction Are tax preparers useful? The longitudinal data structure Panel data and correlated residuals The random-intercept model Different kinds of effects in panel models Endogeneity and between-taxpayer effects Residual diagnostics Linear Random-Coefficient and Growth-Curve Models Introduction How effective are different schools? Separate linear regressions for each school The random-coefficient model How do children grow? Growth-curve modeling Two-stage model formulation Prediction of trajectories for individual children Complex level-1 variation or heteroskedasticity Dichotomous or Binary Responses Models for dichotomous responses Which treatment is best for toenail infection? The longitudinal data structure Population-averaged or marginal probabilities Random-intercept logistic regression Subject-specific vs. population-averaged relationships Maximum likelihood estimation using adaptive quadrature Empirical Bayes (EB) predictions Other approaches to clustered dichotomous data Ordinal Responses Introduction Cumulative models for ordinal responses Are antipsychotic drugs effective for patients with schizophrenia? Longitudinal data structure and graphs A proportional-odds model A random-intercept proportional-odds model A random-coefficient proportional-odds model Marginal and patient-specific probabilities Do experts differ in their grading of student essays? A random-intercept model with grader bias Including grader-specific measurement error variances Including grader-specific thresholds Counts Introduction Types of counts Poisson model for counts Did the German health-care reform reduce the number of doctor visits? Longitudinal data structure Poisson regression ignoring overdispersion and clustering Poisson regression with overdispersion but ignoring clustering Random-intercept Poisson regression Random-coefficient Poisson regression Other approaches to clustered counts Which Scottish countries have a high risk of lip cancer? Standardized mortality ratios Random-intercept Poisson regression Nonparametric maximum likelihood estimation Higher Level Models and Nested Random Effects Introduction Which method is best for measuring expiratory flow? Two-level variance-components models Three-level variance-components models Did the Guatemalan immunization campaign work? A three-level logistic random-intercept model Crossed Random Effects Introduction How does investment depend on expected profit and capital stock? A two-way error-components model How much do primary and secondary schools affect attainment at age 16? An additive crossed random-effects model Including a random interaction A trick requiring fewer random effects Appendix A: Syntax for gllamm, eq, and gllapred Appendix B: Syntax for gllamm Appendix C: Syntax for gllapred Appendix D: Syntax for gllasim References Index A Summary, Further Reading, and Exercises appear at the end of each chapter.
Edition DescriptionRevised edition,New Edition
SynopsisMultilevel and Longitudinal Modeling Using Stata, Second Edition discusses regression modeling of clustered or hierarchical data, such as data on students nested in schools, patients in hospitals, or employees in firms. Longitudinal data are also clustered with, for instance, repeated measurements on patients or several panel waves per survey respondent. Multilevel and longitudinal modeling can exploit the richness of such data and can disentangle processes operating at different levels. Assuming some knowledge of linear regression, this bestseller explains models and their assumptions, applies methods to real data using Stata, and shows how to interpret the results. The applications and exercises span a wide range of disciplines, making the book suitable for courses on multilevel and longitudinal modeling in the medical, social, and behavioral sciences and in applied statistics. This extensively revised second edition includes 3 new chapters, comprehensive updates for Stata 10, 38 new exercises, and 27 new data sets. The authors teach multilevel and longitudinal modeling at their universities and frequently hold workshops at international conferences. They have been developing a general modeling framework, GLLAMM, and Stata software gllamm for multilevel and latent variable modeling. This work has been published in their highly acclaimed book Generalized Latent Variable Modeling: Multilevel, Longitudinal, and Structural Equation Models and in many journals, including Biometrics , Psychometrika , Journal of Econometrics , and Journal of the Royal Statistical Society .
LC Classification NumberHB135