Linear and Generalized Linear Mixed Models and Their Applications - Rilegato

Libro 157 di 160: Springer Series in Statistics

Jiang, Jiming; Nguyen, Thuan

 
9781071612811: Linear and Generalized Linear Mixed Models and Their Applications

Sinossi

<p>This book covers two major classes of mixed effects models, linear mixed models and generalized linear mixed models. It presents an up-to-date account of theory and methods in analysis of these models as well as their applications in various fields. The book offers a systematic approach to inference about non-Gaussian linear mixed models. Furthermore, it includes recently developed methods, such as mixed model diagnostics, mixed model selection, and jackknife method in the context of mixed models. The book is aimed at students, researchers and other practitioners who are interested in using mixed models for statistical data analysis.</p>

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Informazioni sull?autore

<p><b>Jiming Jiang</b> is Professor of Statistics and a former Director of Statistical Laboratory at the University of California, Davis. He is a prominent researcher in the fields of mixed effects models, small area estimation, model selection, and statistical genetics. He is the author of&nbsp;<i>Large Sample Techniques for Statistics</i>&nbsp;(Springer 2010),&nbsp;<i>Robust Mixed Model Analysis</i>&nbsp;(2019),&nbsp;<i>Asymptotic Analysis of Mixed Effects Models: Theory, Applications, and Open Problems&nbsp;</i>(2017), and<i>&nbsp;The Fence Methods&nbsp;</i>(with T. Nguyen, 2016). He has been editorial board member of&nbsp;<i>The Annals of Statistics</i>&nbsp;and&nbsp;<i>Journal of the American Statistical Association</i>, among others. He is a Fellow of the American Association for the Advancement of Science, the American Statistical Association, and the Institute of Mathematical Statistics; an elected member of the International Statistical Institute; and a Yangtze River Scholar (Chaired Professor, 2017-2020).</p><p><b>Thuan Nguyen</b> is Associate Professor of Biostatistics in the School of Public Health at Oregon Health & Science University, where she teaches and advises graduate students. She is an active researcher in the field of biostatistics, specializing in the analysis of longitudinal data and statistical genetics, as well as small area estimation. She is the coauthor of&nbsp;<i>The Fence Methods</i>&nbsp;(with J. Jiang 2016).</p><br><br>

Dalla quarta di copertina

<p>Now in its second edition, this book covers two major classes of mixed effects models—linear mixed models and generalized linear mixed models—and it presents an up-to-date account of theory and methods in analysis of these models as well as their applications in various fields. It offers a systematic approach to inference about non-Gaussian linear mixed models. Furthermore, it discusses the latest developments and methods in the field, incorporating relevant updates since publication of the first edition. These include advances in high-dimensional linear mixed models in genome-wide association studies (GWAS), advances in inference about generalized linear mixed models with crossed random effects, new methods in mixed model prediction, mixed model selection, and mixed model diagnostics.</p>This book is suitable for students, researchers, and practitioners who are interested in using mixed models for statistical data analysis with public health applications. It is best for graduate courses in statistics, or for those who have taken a first course in mathematical statistics, are familiar with using computers for data analysis, and have a foundational background in calculus and linear algebra.<br><p></p>

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Altre edizioni note dello stesso titolo

9781071612842: Linear and Generalized Linear Mixed Models and Their Applications

Edizione in evidenza

ISBN 10:  1071612840 ISBN 13:  9781071612842
Casa editrice: Springer, 2022
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