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Regression Analysis

  • 2nd book:metaData.edition - March 27, 2006
  • book:metaData.latestEdition
  • common:contributors.authors Rudolf J. Freund, William J. Wilson, Ping Sa
  • publicationLanguages:language

Regression Analysis provides complete coverage of the classical methods of statistical analysis. It is designed to give students an understanding of the purpose of statis… seeMoreDescription

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Regression Analysis provides complete coverage of the classical methods of statistical analysis. It is designed to give students an understanding of the purpose of statistical analyses, to allow the student to determine, at least to some degree, the correct type of statistical analyses to be performed in a given situation, and have some appreciation of what constitutes good experimental design.

promoMetaData.keyFeatures

  • Examples and exercises contain real data and graphical illustration for ease of interpretation
  • Outputs from SAS 7, SPSS 7, Excel, and Minitab are used for illustration, but any major statistical
    software package will work equally well

promoMetaData.readership

Because of the universal appeal of statistics and statistical methodology, most graduate programs include as part of their curriculum one or two course in statistical methods. In addition, undergraduate students majoring in mathematics or statistics are required or encouraged to take courses in statistical methods. This book is intended to serve as a text for such courses. The book requires no mathematics beyond algebra, however, mathematically oriented students will still find the material in the text challenging

promoMetaData.tableOfContents

1. The Analysis of Means: A Review of Basics and an Introduction to Linear Models

2. Simple Linear Regression:Linear Regression with One Independent Variable

3. Multiple Regression

4. Problems with Observations

5. Multicollinearity

6. Problems with the Model

7. Curve Fitting

8. Introduction to Nonlinear Models

9. Indicator Variables

10. Categorical Response Variables

11. Generalized Linear Models

Appendix
A: Statistical Tables
B: A Brief Introduction to Matrices
C: Estimation Procedures

promoMetaData.reviewQuotes

"...is well-written , well-organized, and succeeds in making regression analysis understandable, without being overly technical."—Donice McCune, Stephen F. Austin University

"I would say that this book is excellent from both a pedagogical perspective and a learning perspective (by the student). The instructor will enjoy discussing various concepts and then illustrating the concepts through the thorough examples. 6. This textbook will help give the students additional mathematical maturity for handling other statistics courses, especially applied courses like Analysis of Variance."—Steven Garren, James Madison University

promoMetaData.productDetails

  • productDetails.edition: 2
  • book:metaData.latestEdition
  • productDetails.published: May 30, 2006
  • publicationLanguages:languageTitle: publicationLanguages:en

promoMetaData.aboutTheAuthors

RF

Rudolf J. Freund

Rudolf J. Freund works at Texas A&M University in the USA.
promoMetaData.affiliationsAndExpertise
Texas A&M University, USA

WW

William J. Wilson

William J. Wilson works at University of North Florida in Jacksonville, FL, USA.
promoMetaData.affiliationsAndExpertise
University of North Florida, Jacksonville, FL, USA

PS

Ping Sa

promoMetaData.affiliationsAndExpertise
University of North Florida