Amazon上边的评论!!!看起来不错!!!
Editorial Reviews
Review
"The authors have presented an exceptionally detailed and complete guide to using SAS to read and process data, make tables and plots, and fit linear models with fixed, random, or mixtures of fixed and random components. All procedures are illustrated with numerous data examples, and both the SAS commands and the output are explained in meticulous detail. And as one would expect, all of the data and SAS code used in the book may be downloaded from a website. . . . for a student who needs to learn the details of using SAS to process data and fit classical linear models, this book would make an excellent choice." (Dirk F Moore, Journal of Biopharmaceutical Statistics (JBS), Issue #5, 2009)
"The authors provide an easily readable introduction into the SAS language, some of its basic statistical methods, and many applications for statistical linear modeling. . . .Very helpful are the many exercises in each chapter which make this book valuable for teaching at universities and colleges. . . . As of today, almost all test examples and data sets are available from the Web page accompanying the book." (Wolfgang M. Hartman, Journal of Statistical Software, Vol. 28, October 2008)
"The authors have presented an exceptionally detailed and complete guide to using SAS to read and process data, make tables and plots, and fit linear models with fixed, random, or mixtures of fixed and random components. A ll procedures are illustrated with numerous data examples, and both the SAS commands and the output are explained in meticulous detail. And as one would expect, all of the data and SAS code used in the book may be downloaded from a website. … But for a student who needs to learn the details of using SAS to process data and fit classical linear models, this book would make an excellent choice. " (Dirk F. Moore, Journal of Biopharmaceutical Statistics, 2009, Issue 5)
Product Description
This book is an integrated treatment of applied statistical methods, presented at an intermediate level, and the SAS programming language. It serves as an advanced introduction to SAS as well as how to use SAS for the analysis of data arising from many different experimental and observational studies. While there are many introductory texts on SAS programming, statistical methods texts that solely make use of SAS as the software of choice for the analysis of data are rare. While this is understandable from a marketability point of view, clearly such texts will serve the need of many thousands of students and professionals who desire to learn how to use SAS beyond the basic introduction they usually receive from taking an introductory statistics course. More recently, several authors in statistical methodology have begun to incorporate SAS in their texts but these books are limited to more specialized subjects.
Many of the standard topics covered in statistical methods texts supplemented by advanced material more suited for a second course in applied statistics are included, so that specific aspects of SAS procedures can be illustrated. Brief but instructive reviews of the statistical methodologies used are provided, and then illustrated with analysis of data sets used in well-known statistical methods texts. Particular attention is devoted to discussions of models used in each analysis because the authors believe that it is important for users to have not only an understanding of how these models are represented in SAS but also because it helps in the interpretation of the SAS output produced.