Introduction to linear regression analysis/ Douglas C. Montgomery, Elizabeth A. Peck, G. Geoffrey Vining
Material type:
- 9788126510474
- SA.064 M787
Item type | Current library | Call number | Status | Notes | Date due | Barcode | Item holds | |
---|---|---|---|---|---|---|---|---|
Books | ISI Library, Kolkata | SA.064 M787 (Browse shelf(Opens below)) | Available | Gifted by Sampurna Mondal (M.Stat., 2022-2024) | C27619 |
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SA.062 M111 Handbook of graphical models/ | SA.06202855133 F219 Linear models with Python/ | Sa.064 B329 Nonlinear regression analysis and its application/ | SA.064 M787 Introduction to linear regression analysis/ | SA.07 Ad191 Matrix-based introduction to multivariate data analysis/ | SA.07 An551 An introduction to multivariate statistical analysis/ | SA.07 B126 Multivariate analysis: an application-oriented Introduction/ |
Includes bibliography and index
Introduction -- Simple Linear Regression-- Multiple Linear Regression -- Model Adequacy Checking -- Transformation and Weighting to Correct Model Inadequacies -- Diagnostic for Leverage and Influence -- Polynomial Regression Models -- Indicator Variables -- Variable Selection and Model Building -- Multicollinearity -- Robust Regression -- Introduction to Nonlinear Regression -- Generalized Linear Models -- Other Topics in the Use of Regression Analysis -- Validation of Regression Models
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.
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.
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