Linear Models and Generalizations [electronic resource] : Least Squares and Alternatives / by C. Radhakrishna Rao, Helge Toutenburg, Shalabh, Christian Heumann.
Material type: TextSeries: Springer Series in StatisticsPublisher: Berlin, Heidelberg : Springer Berlin Heidelberg : Imprint: Springer, 2008Edition: 3rd ed. 2008Description: XIX, 572 p. online resourceContent type:- text
- computer
- online resource
- 9783540742272
- Probabilities
- Statistics
- Economic theory
- Mathematical statistics
- Operations research
- Decision making
- Probability Theory and Stochastic Processes
- Statistical Theory and Methods
- Economic Theory/Quantitative Economics/Mathematical Methods
- Probability and Statistics in Computer Science
- Operations Research/Decision Theory
- 519.2
- QA273.A1-274.9
- QA274-274.9
Item type | Home library | Collection | Call number | Status | Date due | Barcode | Item holds | |
---|---|---|---|---|---|---|---|---|
E-Book | Biblioteca Digital | Colección SPRINGER | 519.2 (Browse shelf(Opens below)) | Not For Loan |
The Simple Linear Regression Model -- The Multiple Linear Regression Model and Its Extensions -- The Generalized Linear Regression Model -- Exact and Stochastic Linear Restrictions -- Prediction in the Generalized Regression Model -- Sensitivity Analysis -- Analysis of Incomplete Data Sets -- Robust Regression -- Models for Categorical Response Variables.
Thebookisbasedonseveralyearsofexperienceofbothauthorsinteaching linear models at various levels. It gives an up-to-date account of the theory and applications of linear models. The book can be used as a text for courses in statistics at the graduate level and as an accompanying text for courses in other areas. Some of the highlights in this book are as follows. A relatively extensive chapter on matrix theory (Appendix A) provides the necessary tools for proving theorems discussed in the text and o?ers a selectionofclassicalandmodernalgebraicresultsthatareusefulinresearch work in econometrics, engineering, and optimization theory. The matrix theory of the last ten years has produced a series of fundamental results aboutthe de?niteness ofmatrices,especially forthe di?erences ofmatrices, which enable superiority comparisons of two biased estimates to be made for the ?rst time. We have attempted to provide a uni?ed theory of inference from linear models with minimal assumptions. Besides the usual least-squares theory, alternative methods of estimation and testing based on convex loss fu- tions and general estimating equations are discussed. Special emphasis is given to sensitivity analysis and model selection. A special chapter is devoted to the analysis of categorical data based on logit, loglinear, and logistic regression models. The material covered, theoretical discussion, and a variety of practical applications will be useful not only to students but also to researchers and consultants in statistics.
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