ISBN1584881658

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An Introduction to Generalized Linear Models, Second Edition

An Introduction to Generalized Linear Models, Second Edition 4.50 of 5 stars

  • Author(s)  Annette J. Dobson,  Annette .J. Dobson,  
  • Binding  Paperback
  • Edition  2
  • ISBN  1584881658
  • ISBN-13  9781584881650
  • Publisher  Chapman & Hall/CRC
  • Release Date  11/28/2001
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User Opinions

the most clearly written book on the topic
8/16/20025.00 of 5 stars
My copy of the second edition just arrived yesterday and it is even better than the first edition (which was fantastic). The logical organization and clarity of writing make this book a 'must have' for any statistician's library. I'd give it 6 stars if I could. Readers should also check out McCulloch and Searle's 'Generalized, Linear and Mixed Models'.
Clear and Consice but too Compact
11/19/20044.00 of 5 stars
While what the book does explain about the statistical theory mentioned, it is too compact for what it tries to explain. There are also no answers to the excercises, which would be quite helpful given some of the questions asked. It's great for applications and is a good handbook, but for a thorough explanation of everything involved, I recomend getting a bigger textbook! For my 4th year Generalized Linear Models stats class, this book is helpful, but at times too compact to be more useful.
Annette BDobson book on GLM
10/22/20075.00 of 5 stars
This book does exactly what it set out to do. It was recommended to me as as an excellent introduction to GLMs and in this it succeeds.

Even though it's not stated the book really assumes a knowledge of regression and basic ANOVA. If you havn't a reasonable knowledge of the basics of these, this book is not for you.
Armed with basic knowledge Annette Dobson's book is really good. The background theory is covered in the first 5 chapters. This is well structured and deals with the subject in a sensible manner and at a relatively quick pace. As such, it is ideally suited to the intermediate audience of a senior level lecture course and also to researchers who wish to quickly understand and use GLMs.

The second part of the book focuses on applications and interpretations with some more theory - this overlaps and uses the work of the earlier chapters. The key material is covered and the author quickly explains what the results mean and how they should be interpreted. Once again the exposition is thorough but brief and so it suited to a course work environment or the researcher doing self-study/refreshing their knowledge, but it's not for the novice or those starting out in statistical modelling.
clear writing and nice examples
1/23/20085.00 of 5 stars
Bill recommended Dobson's text because of her clear writing style and many useful examples. Dobson also places the theory in the context of the general exponential family of distributions. As I knew that the second edition was about to come out I waited for it.

The wait seems to have been very worthwhile. The second edition is a real bargin.... She has updated it with the many advances that have occurred over the past 12 years since the first edition was printed. This edition now includes some discussion of generalized additive models, broader coverage of applications as survival analysis, GEE, multi-level models and nominal and ordinal logistic regression have been added. It now offers the reader more applications in a wider variety of disciplines and includes modern approaches to diagnostic checking of the models.

As with the first edition, exploratory techniques are emphasized particularly graphical methods. The goal is to unify the apparently disparate statistical techniques that students are exposed to, into one general modeling framework.

It includes a nice up-to-date bibliography and recent advanced results on longitudinal models. The level is intermediate statistics with introductory statistics and linear models taken to be prerequisites. Students are also required to have some familiarity with calculus and linear algebra.

GLMs in a Nutshell
2/23/20085.00 of 5 stars
If you are one of those people that like to learn few things and be able to apply them to many, this is a book for you. It provides derivations for properties of a whole family of distributions, which can be applied to each of the member distributions. It is short, sweet, and straight to the point. Basic knowledge of linear algebra and multivariate calculus might be necessary. As a complementary text and for a more detailed discussion, I would also recommend Statistical Models by David Freedman.