<p>Any method of fitting equations to data may be called regression. Such equations are valuable for at least two purposes: making predictions and judging the strength of relationships. Because they provide a way of emΒ pirically identifying how a variable is affected by other variables, regression
Regression Analysis: Theory, Methods, and Applications
β Scribed by Ashish Sen, Muni Srivastava (auth.)
- Publisher
- Springer-Verlag New York
- Year
- 1990
- Tongue
- English
- Leaves
- 360
- Series
- Springer Texts in Statistics
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Any method of fitting equations to data may be called regression. Such equations are valuable for at least two purposes: making predictions and judging the strength of relationships. Because they provide a way of emΒ pirically identifying how a variable is affected by other variables, regression methods have become essential in a wide range of fields, including the social sciences, engineering, medical research and business. Of the various methods of performing regression, least squares is the most widely used. In fact, linear least squares regression is by far the most widely used of any statistical technique. Although nonlinear least squares is covered in an appendix, this book is mainly about linear least squares applied to fit a single equation (as opposed to a system of equations). The writing of this book started in 1982. Since then, various drafts have been used at the University of Toronto for teaching a semester-long course to juniors, seniors and graduate students in a number of fields, including statistics, pharmacology, engineering, economics, forestry and the behavΒ ioral sciences. Parts of the book have also been used in a quarter-long course given to Master's and Ph.D. students in public administration, urban planΒ ning and engineering at the University of Illinois at Chicago (UIC). This experience and the comments and criticisms from students helped forge the final version.
β¦ Table of Contents
Front Matter....Pages i-xv
Introduction....Pages 1-27
Multiple Regression....Pages 28-59
Tests and Confidence Regions....Pages 60-82
Indicator Variables....Pages 83-99
The Normality Assumption....Pages 100-110
Unequal Variances....Pages 111-131
Correlated Errors....Pages 132-153
Outliers and Influential Observations....Pages 154-179
Transformations....Pages 180-217
Multicollinearity....Pages 218-232
Variable Selection....Pages 233-252
Biased Estimation....Pages 253-264
Back Matter....Pages 265-347
β¦ Subjects
Statistical Theory and Methods
π SIMILAR VOLUMES
<p><p>This book addresses key aspects of recent developments in applied mathematical analysis and its use. It also highlights a broad range of applications from science, engineering, technology and social perspectives. Each chapter investigates selected research problems and presents a balanced mix
This bestseller will help you learn regression-analysis methods that you can apply to real-life problems. It highlights the role of the computer in contemporary statistics with numerous printouts and exercises that you can solve using the computer. The authors continue to emphasize model development
This bestseller will help you learn regression-analysis methods that you can apply to real-life problems. It highlights the role of the computer in contemporary statistics with numerous printouts and exercises that you can solve using the computer. The authors continue to emphasize model development
<span>1. Multivariate Linear Regression.- 2. Reduced-Rank Regression Model.- 3. Reduced-Rank Regression Models with Two Sets of Regressors.- 4. Reduced-Rank Regression Model with Autoregressive Errors.- 5. Multiple Time Series Modeling with Reduced Ranks.- 6. The Growth Curve Model and Reduced-Rank