Linear Statistical Models | 
enlarge | Author: James H. Stapleton Publisher: Wiley-Interscience Category: Book
List Price: $142.50 Buy New: $111.00 You Save: $31.50 (22%)
New (13) Used (12) from $47.95
Rating: 6 reviews Sales Rank: 1317664
Media: Hardcover Edition: 1 Pages: 472 Number Of Items: 1 Shipping Weight (lbs): 1.8 Dimensions (in): 9.5 x 6.4 x 1.1
ISBN: 0471571504 Dewey Decimal Number: 519.538 EAN: 9780471571506
Publication Date: July 14, 1995 Availability: Usually ships in 1-2 business days
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Product Description Linear Statistical Models Developed and refined over a period of twenty years, the material in this book offers an especially lucid presentation of linear statistical models. These models lead to what is usually called "multiple regression" or "analysis of variance" methodology, which, in turn, opens up a wide range of applications to the physical, biological, and social sciences, as well as to business, agriculture, and engineering. Unlike similar books on this topic, Linear Statistical Models emphasizes the geometry of vector spaces because of the intuitive insights this approach brings to an understanding of the theory. While the focus is on theory, examples of applications, using the SAS and S-Plus packages, are included. Prerequisites include some familiarity with linear algebra, and probability and statistics at the postcalculus level. Major topics covered include: * Methods of study of random vectors, including the multivariate normal, chi-square, t and F distributions, central and noncentral * The linear model and the basic theory of regression analysis and the analysis of variance * Multiple regression methods, including transformations, analysis of residuals, and asymptotic theory for regression analysis. Separate sections are devoted to robust methods and to the bootstrap. * Simultaneous confidence intervals: Bonferroni, Scheffe, Tukey, and Bechhofer * Analysis of variance, with two- and three-way analysis of variance * Random component models, nested designs, and balanced incomplete block designs * Analysis of frequency data through log-linear models, with emphasis on vector space viewpoint. This chapter alone is sufficient for a course on the analysis of frequency data.
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| Customer Reviews: Read 1 more reviews...
Elegant and practical treatment December 7, 2001 Stewart Ethier (Salt Lake City, UT) 2 out of 2 found this review helpful
I've used this text twice for a one-semester graduate course in linear models, emphasizing Chapters 1,2,3,5,6, and would use it again. It is outstanding.The best feature of the book is its consistent theme: a least squares estimator is an orthogonal projection onto a subspace, which can be evaluated by orthogonal decomposition of the subspace. This gives the subject the elegance of pure mathematics, while at the same time making complex topics such as two-way and three-way analysis of variance readily accessible. The second-best feature of the book is the extensive collection of problems. Most are just at the right level, not simply cookbook plug-in type exercises, but problems that require understanding, yet not too difficult for the average student, who is typically not a math major. A few of the problems require statistical software, but most do not. The only negative aspect of the book is the large number of errata, although this does have the advantage of teaching the students to adopt a healthy degree of skepticism.
Elegant and practical treatment December 19, 2001 Stewart Ethier (Salt Lake City, UT) 1 out of 1 found this review helpful
I've used this text twice for a one-semester graduate course in linear models, emphasizing Chapters 1,2,3,5,6, and would use it again. It is outstanding.The best feature of the book is its consistent theme: a least squares estimator is an orthogonal projection onto a subspace, which can be evaluated by orthogonal decomposition of the subspace. This gives the subject the elegance of pure mathematics, while at the same time making complex topics such as two-way and three-way analysis of variance readily accessible. The second-best feature of the book is the extensive collection of problems. Most are just at the right level, not simply cookbook plug-in type exercises, but problems that require understanding, yet not too difficult for the average student, who is typically not a math major. A few of the problems require statistical software, but most do not. The only negative aspect of the book is the large number of errata, although this does have the advantage of teaching the students to adopt a healthy degree of skepticism about what they read.
The way linear models should be taught March 28, 2003 Approach of linear models from a geometric point of view is often addressed in a single lecture or chapter and does not provide much assistance in the understanding of the material. This book, however, presents all material usually covered in a linear models book from this approach. For those who have learned models both ways, proofs and applications using these geometrical concepts are much less cumbersome than the standard matrix algebra manipulation. Additionally, having a solid understanding of this material is a greater help in the understanding of more advanced topics. As stated, the book is dense and previous exposure is useful if the reader is not assisted by a knowledgeable instructor.
theorical May 27, 2008 Reader (Pennsylvania, USA) Good book. You need to know a bit of statistics to get this book and understand it.
Very compact book, not an introductory text July 22, 1999 Roger Peng (Baltimore, MD USA) 1 out of 1 found this review helpful
This book is very compact, which for me was one of its negative qualities. Part of the problem is the way the book is printed, with many proofs and mathematical statements embedded in the text rather than on lines by themselves. I imagine this saves in printing costs but it makes the text relatively unreadable. This book, however, would serve as a decent linear models reference .
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