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Introduction to Linear Regression Analysis, 3rd Edition [Hardcover]

Douglas C. Montgomery (Author), Elizabeth A. Peck (Author), G. Geoffrey Vining (Author)
3.7 out of 5 stars  See all reviews (9 customer reviews)


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Introduction to Linear Regression Analysis (Wiley Series in Probability and Statistics) Introduction to Linear Regression Analysis (Wiley Series in Probability and Statistics) 3.7 out of 5 stars (9)
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Book Description

0471315656 978-0471315650 April 2, 2001 3
A comprehensive and thoroughly up-to-date look at regression analysis-still the most widely used technique in statistics today
As basic to statistics as the Pythagorean theorem is to geometry, regression analysis is a statistical technique for investigating and modeling the relationship between variables. With far-reaching applications in almost every field, regression analysis is used in engineering, the physical and chemical sciences, economics, management, life and biological sciences, and the social sciences.
Clearly balancing theory with applications, Introduction to Linear Regression Analysis describes conventional uses of the technique, as well as less common ones, placing linear regression in the practical context of today's mathematical and scientific research. Beginning with a general introduction to regression modeling, including typical applications, the book then outlines a host of technical tools that form the linear regression analytical arsenal, including: basic inference procedures and introductory aspects of model adequacy checking; how transformations and weighted least squares can be used to resolve problems of model inadequacy; how to deal with influential observations; and polynomial regression models and their variations. Succeeding chapters include detailed coverage of:
* Indicator variables, making the connection between regression and analysis-of-variance modelss
* Variable selection and model-building techniques
* The multicollinearity problem, including its sources, harmful effects, diagnostics, and remedial measures
* Robust regression techniques, including M-estimators, Least Median of Squares, and S-estimation
* Generalized linear models
The book also includes material on regression models with autocorrelated errors, bootstrapping regression estimates, classification and regression trees, and regression model validation. Topics not usually found in a linear regression textbook, such as nonlinear regression and generalized linear models, yet critical to engineering students and professionals, have also been included. The new critical role of the computer in regression analysis is reflected in the book's expanded discussion of regression diagnostics, where major analytical procedures now available in contemporary software packages, such as SAS, Minitab, and S-Plus, are detailed. The Appendix now includes ample background material on the theory of linear models underlying regression analysis. Data sets from the book, extensive problem solutions, and software hints are available on the ftp site. For other Wiley books by Doug Montgomery, visit our website at www.wiley.com/college/montgomery.


Editorial Reviews

Review

“…an excellent textbook…I would certainly recommend it for educational as well as for applied research purposes” (Statistical Methods in Medical Research, No.13, 2004)

"...[the authors] describe conventional uses of the technique, as well as less common ones, placing linear regression in the practical context of today's mathematical and scientific research." (SciTech Book News Vol. 25, No. 2 June 2001)

"an excellent text" (Zentrablatt Math, Vol. 980, No. 05, 2002)

"...a very good book..." (The American Statistician, Vol. 57, No. 1, February 2003)

From the Back Cover

A comprehensive and thoroughly up-to-date look at regression analysis-still the most widely used technique in statistics today

As basic to statistics as the Pythagorean theorem is to geometry, regression analysis is a statistical technique for investigating and modeling the relationship between variables. With far-reaching applications in almost every field, regression analysis is used in engineering, the physical and chemical sciences, economics, management, life and biological sciences, and the social sciences.

Clearly balancing theory with applications, Introduction to Linear Regression Analysis describes conventional uses of the technique, as well as less common ones, placing linear regression in the practical context of today's mathematical and scientific research. Beginning with a general introduction to regression modeling, including typical applications, the book then outlines a host of technical tools that form the linear regression analytical arsenal, including: basic inference procedures and introductory aspects of model adequacy checking; how transformations and weighted least squares can be used to resolve problems of model inadequacy; how to deal with influential observations; and polynomial regression models and their variations. Succeeding chapters include detailed coverage of:

? Indicator variables, making the connection between regression and analysis-of-variance modelss
? Variable selection and model-building techniques
? The multicollinearity problem, including its sources, harmful effects, diagnostics, and remedial measures
? Robust regression techniques, including M-estimators, Least Median of Squares, and S-estimation
? Generalized linear models

The book also includes material on regression models with autocorrelated errors, bootstrapping regression estimates, classification and regression trees, and regression model validation. Topics not usually found in a linear regression textbook, such as nonlinear regression and generalized linear models, yet critical to engineering students and professionals, have also been included. The new critical role of the computer in regression analysis is reflected in the book's expanded discussion of regression diagnostics, where major analytical procedures now available in contemporary software packages, such as SAS, Minitab, and S-Plus, are detailed. The Appendix now includes ample background material on the theory of linear models underlying regression analysis. Data sets from the book, extensive problem solutions, and software hints are available on the ftp site. For other Wiley books by Doug Montgomery, visit our website at www.wiley.com/college/montgomery.

Product Details

  • Hardcover: 672 pages
  • Publisher: Wiley-Interscience; 3 edition (April 2, 2001)
  • Language: English
  • ISBN-10: 0471315656
  • ISBN-13: 978-0471315650
  • Product Dimensions: 9.5 x 6.3 x 1.4 inches
  • Shipping Weight: 2.6 pounds
  • Average Customer Review: 3.7 out of 5 stars  See all reviews (9 customer reviews)
  • Amazon Best Sellers Rank: #340,651 in Books (See Top 100 in Books)

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9 Reviews
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18 of 21 people found the following review helpful:
5.0 out of 5 stars Excellent introduction to linear regression, January 11, 2005
This review is from: Introduction to Linear Regression Analysis, 3rd Edition (Hardcover)
If you have a desire or need to develop regression models, whether for prediction or classification, this is a great place to start climbing the learning curve. The book covers all the essentials, such as how to fit a model to a set of data, how to evaluate the quality of the fit, and how to detect influential data points. It also does a good job with some of the issues involved in fitting a regression (most notably colinearity, overfitting, outliers, and deviations from normality) and discusses ridge regression, principal components regression, and other so-called "robust" methods for dealing with such issues. Even if you plan to use nonlinear modelling techniques like polynomial regression or feed-forward neural networks, this book is worth reading: many of the same issues that are involved when developing linear regression models arise in the context of nonlinear models. I use multivariate polynomial regression models for pricing options, and cite this book in my own recent work on that subject--"Advanced Option Pricing Models" (McGraw Hill, Feb 2005).

Jeffrey Owen Katz, Ph.D.
Author (with Donna L. McCormick) of "The Encyclopedia of Trading Strategies" (McGraw Hill, 2000).
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4 of 4 people found the following review helpful:
5.0 out of 5 stars For Self Study Get An Earlier Edition, January 28, 2010
By 
Railbird (Boxborough, MA United States) - See all my reviews
Amazon Verified Purchase(What's this?)
This review is from: Introduction to Linear Regression Analysis, 3rd Edition (Hardcover)
I have access to this, the third edition and the latest, the fourth edition, through my company's library. There is really no material difference in the content and I was able to save about 80% of the purchase price by buying a used copy of the third edition, vs. new copy of fourth edition.

Wonderful book for self study. You will benefit most if you have a good background in probability theory and linear algebra and want to understand the details and language of linear regression. Even without that background chapters one through three will teach you more than you will ever learn in most survey courses in statistics. To fully appreciate the whole book I think you need a one semester course in linear algebra and one or two semesters of probability theory.
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3 of 3 people found the following review helpful:
2.0 out of 5 stars Wiley needs a proofreader fantastically, December 15, 2010
This was used as the textbook in a course in Linear Regression
Analysis that I recently attended as an auditor. I'm a mathematician,
not a statistician, so much of the material, and the authors' ways of
looking at it, were not familiar to me. My statistician colleagues
assure me that the techniques in the book are correct, useful, and
mostly up to date. And I believe them.

Alas, the book is poorly edited, and in just the few chapters we
covered, I found a score of errors, including misstated formulas,
misplaced graphics, multiplication where there should be division, and
even some numerical errors. If you, as an instructor, decide to adopt
this book for your course, be prepared to do a lot of proofreading
(the publisher apparently didn't bother) and to distribute textbook
corrections to your students. Also note that this book, like so many
Wiley textbooks, is overpriced.

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Inside This Book (learn more)
First Sentence:
Regression analysis is a statistical technique for investigating and modeling the relationship between variables. Read the first page
Key Phrases - Statistically Improbable Phrases (SIPs): (learn more)
delivery time data, acetylene data, propellant data, problem with the normality assumption, pneumoconiosis data, windmill data, simple linear regression model fit, model adequacy checking, puromycin data, standardized regressors, subset regression model, stack loss data, voltage drop data, hardwood concentration, candidate regressors, biased estimation methods, cement data, prediction data sets, jth regression coefficient, reparametrized model, cubic spline model, unit length scaling, inverter data, model summary statistics, compound estimators
Key Phrases - Capitalized Phrases (CAPs): (learn more)
Appendix Table, National Football League, Corrected Total, Sum of Squares Mean Square, Variable Parameter Estimate Standard Error Type, Delivery Time Data Observation, San Diego, Analysis of Parameter Estimates Parameter, Coefficient Estimate Standard Error, Continuation of Problem, Monte Carlo, Observation Number, Scaled Pearson, Value Value, Analysis Source Deviance, Pearson Chi-Square, Pinot Noir, Repeat Problem, The Delivery Time Data Column, The Delivery Time Data Figure, Belle Ayr, Log Likelihood
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