Data Analysis Using Regression and Multilevel/Hierarchical Models | 
enlarge | Authors: Andrew Gelman, Jennifer Hill Publisher: Cambridge University Press Category: Book
List Price: $43.99 Buy New: $34.95 You Save: $9.04 (21%)
New (23) Used (7) from $30.13
Rating: 12 reviews Sales Rank: 40014
Media: Paperback Edition: 1 Pages: 648 Number Of Items: 1 Shipping Weight (lbs): 1.8 Dimensions (in): 9.9 x 7 x 1.3
ISBN: 052168689X Dewey Decimal Number: 519.536 EAN: 9780521686891
Publication Date: December 18, 2006 Availability: Usually ships in 1-2 business days Shipping: Expedited shipping available Condition: New
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Product Description Data Analysis Using Regression and Multilevel/Hierarchical Models is a comprehensive manual for the applied researcher who wants to perform data analysis using linear and nonlinear regression and multilevel models. The book introduces a wide variety of models, whilst at the same time instructing the reader in how to fit these models using available software packages. The book illustrates the concepts by working through scores of real data examples that have arisen from the authors' own applied research, with programming codes provided for each one. Topics covered include causal inference, including regression, poststratification, matching, regression discontinuity, and instrumental variables, as well as multilevel logistic regression and missing-data imputation. Practical tips regarding building, fitting, and understanding are provided throughout. Author resource page: http://www.stat.columbia.edu/~gelman/arm/
Book Description Data Analysis Using Regression and Multilevel/Hierarchical Models is a comprehensive manual for the applied researcher who wants to perform data analysis using linear and nonlinear regression and multilevel models. The book introduces and demonstrates a wide variety of models and instructs the reader in how to fit these models using freely available software packages.
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| Customer Reviews: Read 7 more reviews...
Integrated Material January 10, 2007 Jeff Gill (Boston) 74 out of 75 found this review helpful
Gelman and Hill have put together a fabulously well-integrated look at general modeling with a focus on hierarchical structures. The book starts with simple modeling principles and continues well into material that would satisfy a third semester course in many social science grad programs. This book does something that is extremely hard: presenting serious technical ideas without overwhelming language and detail, making the chapters unusally easy to read and digest. They also do a very nice job of balancing Bayesian and traditional approaches without denigrating or over-promoting either. This should considerably broaden the appeal. Furthermore, the emphasis on R and WinBugs means that readers can immediately (and for free) run through the techniques. I see this book as primarily a teaching tool, although many will use it as a reference. In this light, it is without peer right now in terms of coverage (basically all of the standard/basic regression models that get taught to social science grad students), price/page ratio (0.15366), and accessibility. Many of us have used econometric texts for such purposes over the years, living with a slightly mismatched set of criteria to rely on the quality of these works (Greene, Mittlehammer et al., etc.), but now there is a competitor that fits much more nicely with non-economic methods training (less of a fixation with asymptotics, no need for 200 named flavors of each model, and so on). Finally, the practical advice and admonitations that accompany the model descriptions will be immensely helpful to practitioners.
very broad coverage of data analysis with hierarchical models June 12, 2008 Michael R. Chernick (Holland PA) 34 out of 34 found this review helpful
Andrew Gelman is a top researcher in Bayesian statistics as well as an excellent writer. He has written an excellent text on Bayesian data analysis that uses the Markov Chain Monte Carlo methods for dealing with hierarchical linear models. This book starts out on an introductory level covering a wide variety of statistical modeling problems including logistic regression and multilevel logistic regression, generalized linear models and causal inference. The MCMC methods are taught using BUGS and R. This book is not exclusively Bayesian as both likelihood and Bayesian procedures are presented. The topics are general but the emphasis is on social science applications. It is very comprehensive and has received enthusiastic reviews from well known statisticians including Dick Deveaux, Brad Carlin and Jeff Gill. Jeff's review is here on amazon. Jeff is a colleague of mine and he has written one of the finest introductory texts on Bayesian methods including the hierarchical models. His text is now out in its second edition. Jeff also wrote his book with the social scientists in mind. Jeff's review has been the most looked at and voted the most helpful on this site. As this topic is a specialty area for him more than it is for me, I recommend that if you are interested in the material in this book that his review is very much worth reading.
Fantastic Blend of Theory and Practical Advice February 4, 2007 Theodore J. Iwashyna (Philadelphia, PA) 25 out of 26 found this review helpful
I came to this text with a very pragmatic need: I needed power calculations of a multi-level model, and I needed them fast. I skipped directly to Chapter 20, which is the most accessible treatment of multi-level power-calculations I have ever read. A few hours later, I had the calculations I needed done. (Take home point: this book has a wonderfully practical side.) To my surprise, I also really understood what I had done, why I had done it, and other approaches that I might have taken. That is, the text very effectively provides the broader theoretical overview, gives a concise real-statistics treatment, and pragmatically teaches you how to actually do the analyses you need to do. Gelman & Hill have that rare ability to both teach the abstract and directly help you do the practical. (Fans of Paul Allison's books will love this one, too.) This is a must-have for the shelf, and I am sure I will come back to it repeatedly.
The best introduction to multilevel modeling out there April 7, 2007 Shaking&Aching (Texas) 24 out of 25 found this review helpful
I have to qualify this review by saying that I proceeded from the 11th chapter since the first ten were more or less review. Also, I am not a statistician by any stretch of the imagination. My math background is pure math and economics degrees with some too-practical econometrics. In spite of that, I understood this book quite well. Hence my positive review. Compared to other comprehensive treatments of HLM, such as Singer and Willett or Hox, this book is in a universe all its own. I actually took Hox's course from him and still barely understood HLM, yet got the highest marks in the class. That's not a good thing. I felt like I wasted my time. I actually learned a great deal from this book, and more than practical method (which I have since used), I actually understood what it was I was doing. The few R examples I did were worth it, and I would try them out if you can. In the past I have made two abortive runs at learning MLM/HLM, but this time it stuck. This book is extraordinarily well-written, as if it has been taught to non-statisticians a number of times. This is perhaps due to the presence of Hill as coauthor. Her public affairs students are not likely to value the math for its own sake. I alotted myself a month to master the latter chapters, some of which were completely new to me and it took me less than a week. Drawbacks: Typos: None of these were in substantive portions of the text such as equations and data print-outs. Still, a few in the wording were present. Mine is a first printing, however, so these might not be in your copies. Program use: I think that they should also have offered SAS, SPSS, or Stata excercises. I only incidentally learned R, but would prefer to use a more standard software package for the excercises.
Outstandingly useful for social scientists September 21, 2007 MrDNA (Spokane, WA) 10 out of 10 found this review helpful
I found this book after reading up on the weaknesses of traditional psychological statistics and methods. I read through 3 or 4 classic texts on classical regression (Casella and Berger, etc) and a couple more texts on Bayesian analysis (including Gelman's own Bayesian Data Analysis). When this book came out, I was quite excited and pre-ordered it. The book far exceeded my expectations. It is written in a crisp clear style and presented very concisely not only how to write but how to interpret multilevel models and especially Bayesian models. I feel I would have been just almost as well off having just read this book and not taken the time reading the other text books. The book is especially refreshing to me because it explains the basics of data analysis in ways that many psychologists -- who typically don't have a background in probability or linear algebra -- can understand. For this reason alone, this is the book I recommend to any colleague who wants to learn more about statistics. The fact that it might inspire them to create more realistic models or become a Bayesian is just an added benefit. In fact, I have purchased several copies and keep most of them in continuous circulation among coworkers who ask to borrow them. That said, the following might be noted: (1) There are typos and errors in some of the graphs in the first edition. This is unfortunate, but not a huge deal. The book is cheap for a textbook already, and purchasing an ultra-cheap used first printing with all the typos won't really affect how much you learn. So if you're shopping around for texts and are worried about cost, that's the way I would go. (2) I don't have a math or computer science background, but I do understand the concepts underlying most of the math that goes into the book. I don't know how understandable the book would be without a basic familiarity with matrix notation or classical regression. I imagine the book would be less interesting for people with more of a math background, in which case Bayesian Data Analysis may be more your speed. With that in mind, many social scientists have taken classes in regression and should be fine to read the book. (3) Another reviewer mentioned that contacting the authors was a waste of time. I have had the opposite experience contacting the authors. They have been extremely helpful when I've contacted them. In addition I find that the web site contains a lot of useful information. Professor Gelman posts questions he receives about the book and their answers to his blog, which can be found from his main website. I suggest searching there for answers to common questions.
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