Handbook of Multilevel Analysis
Leeuw, Jan de
Handbook of Multilevel Analysis [electronic resource]/ edited by Jan de Leeuw, Erik Meijer. - New York: Springer New York, 2008. - digital.
Introduction to multilevel analysis, Jan de Leeuw, Erik Meijer -- Bayesian multilevel analysis and MCMC, David Draper -- Diagnostic checks for multilevel models, Tom A.B. Snijders, Johannes Berkhof -- Optimal designs for multilevel studies, Mirjam Moerbeek, Gerard J.P. Van Breukelen, Martijn P.F. Berger -- Many small groups, Stephen W. Raudenbush -- Multilevel models for ordinal and nominal variables, Donald Hedeker -- Multilevel and related models for longitudinal data, Anders Skrondal, Sophia Rabe-Hesketh -- Non-hierarchical multilevel models, Jon Rasbash, William J. Browne -- Multilevel generalized linear models, Germán Rodríguez -- Missing Data, Nicholas T. Longford -- Resampling multilevel models, Rien van der Leeden, Erik Meijer, Frank M.T.A. Busing -- Multilevel structural equation modeling, Stephen H.C. du Toit, Mathilda du Toit .
Multilevel analysis is the statistical analysis of hierarchically and non-hierarchically nested data. The simplest example is clustered data, such as a sample of students clustered within schools. Multilevel data are especially prevalent in the social and behavioral sciences and in the bio-medical sciences. The models used for this type of data are linear and nonlinear regression models that account for observed and unobserved heterogeneity at the various levels in the data. This book presents the state of the art in multilevel analysis, with an emphasis on more advanced topics. These topics are discussed conceptually, analyzed mathematically, and illustrated by empirical examples. The authors of the chapters are the leading experts in the field. Given the omnipresence of multilevel data in the social, behavioral, and biomedical sciences, this book is useful for empirical researchers in these fields. Prior knowledge of multilevel analysis is not required, but a basic knowledge of regression analysis, (asymptotic) statistics, and matrix algebra is assumed. Jan de Leeuw is Distinguished Professor of Statistics and Chair of the Department of Statistics, University of California at Los Angeles. He is former president of the Psychometric Society, former editor of the Journal of Educational and Behavioral Statistics, founding editor of the Journal of Statistical Software, and editor of the Journal of Multivariate Analysis. He is coauthor (with Ita Kreft) of Introducing Multilevel Modeling and a member of the Albert Gifi team who wrote Nonlinear Multivariate Analysis. Erik Meijer is Economist at the RAND Corporation and Assistant Professor of Econometrics at the University of Groningen. He is coauthor (with Tom Wansbeek) of the highly acclaimed book Measurement Error and Latent Variables in Econometrics .
9780387731865
10.1007/978-0-387-73186-5 doi
Statistics.
Epidemiology.
Mathematical statistics
Econometrics
Social sciences--Methodology
Psychometrics.
519.5
Handbook of Multilevel Analysis [electronic resource]/ edited by Jan de Leeuw, Erik Meijer. - New York: Springer New York, 2008. - digital.
Introduction to multilevel analysis, Jan de Leeuw, Erik Meijer -- Bayesian multilevel analysis and MCMC, David Draper -- Diagnostic checks for multilevel models, Tom A.B. Snijders, Johannes Berkhof -- Optimal designs for multilevel studies, Mirjam Moerbeek, Gerard J.P. Van Breukelen, Martijn P.F. Berger -- Many small groups, Stephen W. Raudenbush -- Multilevel models for ordinal and nominal variables, Donald Hedeker -- Multilevel and related models for longitudinal data, Anders Skrondal, Sophia Rabe-Hesketh -- Non-hierarchical multilevel models, Jon Rasbash, William J. Browne -- Multilevel generalized linear models, Germán Rodríguez -- Missing Data, Nicholas T. Longford -- Resampling multilevel models, Rien van der Leeden, Erik Meijer, Frank M.T.A. Busing -- Multilevel structural equation modeling, Stephen H.C. du Toit, Mathilda du Toit .
Multilevel analysis is the statistical analysis of hierarchically and non-hierarchically nested data. The simplest example is clustered data, such as a sample of students clustered within schools. Multilevel data are especially prevalent in the social and behavioral sciences and in the bio-medical sciences. The models used for this type of data are linear and nonlinear regression models that account for observed and unobserved heterogeneity at the various levels in the data. This book presents the state of the art in multilevel analysis, with an emphasis on more advanced topics. These topics are discussed conceptually, analyzed mathematically, and illustrated by empirical examples. The authors of the chapters are the leading experts in the field. Given the omnipresence of multilevel data in the social, behavioral, and biomedical sciences, this book is useful for empirical researchers in these fields. Prior knowledge of multilevel analysis is not required, but a basic knowledge of regression analysis, (asymptotic) statistics, and matrix algebra is assumed. Jan de Leeuw is Distinguished Professor of Statistics and Chair of the Department of Statistics, University of California at Los Angeles. He is former president of the Psychometric Society, former editor of the Journal of Educational and Behavioral Statistics, founding editor of the Journal of Statistical Software, and editor of the Journal of Multivariate Analysis. He is coauthor (with Ita Kreft) of Introducing Multilevel Modeling and a member of the Albert Gifi team who wrote Nonlinear Multivariate Analysis. Erik Meijer is Economist at the RAND Corporation and Assistant Professor of Econometrics at the University of Groningen. He is coauthor (with Tom Wansbeek) of the highly acclaimed book Measurement Error and Latent Variables in Econometrics .
9780387731865
10.1007/978-0-387-73186-5 doi
Statistics.
Epidemiology.
Mathematical statistics
Econometrics
Social sciences--Methodology
Psychometrics.
519.5