Regression for categorical data
Series: Cambridge Series in Statistical and Probabilistic Mathematics; 34Publication details: Cambridge Cambridge University Press 2012Description: x, 561 pISBN:- 1107009650
- 9780511842061
- 519.536 T8R3
Item type | Current library | Collection | Shelving location | Call number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|---|
eBooks | Vikram Sarabhai Library | Non-fiction | Electronic Resources | 519.536 T8R3 (Browse shelf(Opens below)) | Available | ER000498 |
Table of contents:
1. Introduction
2. Binary Regression: The Logit Model
3. Generalized Linear Models
4. Modeling of Binary Data
5. Alternative Binary Regression Models
6. Regularization and Variable Selection for Parametric Models
7. Regression Analysis of Count Data
8. Multinomial Response Models
9. Ordinal Response Models
10. Semi- and Non-Parametric Generalized Regression
11. Tree-Based Methods
12. The Analysis of Contingency Tables: Log-Linear and Graphical Models
13. Multivariate Response Models
14. Random Effects Models and Finite Mixtures
15. Prediction and Classification
This book introduces basic and advanced concepts of categorical regression with a focus on the structuring constituents of regression, including regularization techniques to structure predictors. In addition to standard methods such as the logit and probit model and extensions to multivariate settings, the author presents more recent developments in flexible and high-dimensional regression, which allow weakening of assumptions on the structuring of the predictor and yield fits that are closer to the data. A generalized linear model is used as a unifying framework whenever possible in particular parametric models that are treated within this framework. Many topics not normally included in books on categorical data analysis are treated here, such as nonparametric regression; selection of predictors by regularized estimation procedures; ternative models like the hurdle model and zero-inflated regression models for count data; and non-standard tree-based ensemble methods, which provide excellent tools for prediction and the handling of both nominal and ordered categorical predictors. The book is accompanied an R package that contains data sets and code for all the examples.
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