Fr. 188.00

Generalized Estimating Equations

Inglese · Tascabile

Spedizione di solito entro 1 a 2 settimane (il titolo viene stampato sull'ordine)

Descrizione

Ulteriori informazioni

Generalized estimating equations have become increasingly popular in biometrical, econometrical, and psychometrical applications because they overcome the classical assumptions of statistics, i.e. independence and normality, which are too restrictive for many problems.
Therefore, the main goal of this book is to give a systematic presentation of the original generalized estimating equations (GEE) and some of its further developments. Subsequently, the emphasis is put on the unification of various GEE approaches. This is done by the use of two different estimation techniques, the pseudo maximum likelihood (PML) method and the generalized method of moments (GMM).
The author details the statistical foundation of the GEE approach using more general estimation techniques. The book could therefore be used as basis for a course to graduate students in statistics, biostatistics, or econometrics, and will be useful to practitioners in the same fields.

Sommario

The linear exponential family.- The quadratic exponential family.- Generalized linear models.- Maximum likelihood method.- Quasi maximum likelihood method.- Pseudo maximum likelihood method based on the linear exponential family.- Quasi generalized pseudo maximum likelihood method based on the linear exponential family.- Algorithms for solving the generalized estimating equations and the relation to the jack-knife estimator of variance.- Pseudo maximum likelihood estimation based on the quadratic exponential family.- Generalized method of moment estimation.

Info autore

Andreas Ziegler obtained - after studying statistics and mathematics at the University of Munich - his doctoral degree from the University of Dortmund (Germany) for his thesis on methodological developments on generalized estimating equations. In the past 15 years, he has authored or co-authored more than 300 journal articles and 6 books. He has received several awards for his methodological developments and collaborative studies in clinical trials and genetic epidemiology. Andreas Ziegler is professor and head of the Institute of Medical Biometry and Statistics at the University of Lübeck (Germany).

Riassunto

Generalized estimating equations have become increasingly popular in biometrical, econometrical, and psychometrical applications because they overcome the classical assumptions of statistics, i.e. independence and normality, which are too restrictive for many problems.
Therefore, the main goal of this book is to give a systematic presentation of the original generalized estimating equations (GEE) and some of its further developments. Subsequently, the emphasis is put on the unification of various GEE approaches. This is done by the use of two different estimation techniques, the pseudo maximum likelihood (PML) method and the generalized method of moments (GMM).
The author details the statistical foundation of the GEE approach using more general estimation techniques. The book could therefore be used as basis for a course to graduate students in statistics, biostatistics, or econometrics, and will be useful to practitioners in the same fields.

Dettagli sul prodotto

Autori Andreas Ziegler
Editore Springer, Berlin
 
Lingue Inglese
Formato Tascabile
Pubblicazione 31.07.2011
 
EAN 9781461404989
ISBN 978-1-4614-0498-9
Pagine 144
Dimensioni 157 mm x 236 mm x 10 mm
Peso 248 g
Illustrazioni XV, 144 p.
Serie Lecture Notes in Statistics
Lecture Notes in Statistics
Categoria Scienze naturali, medicina, informatica, tecnica > Matematica > Teoria delle probabilità, stocastica, statistica matematica

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