Applied regression analysis and generalized linear models

書誌事項

Applied regression analysis and generalized linear models

John Fox

Sage, c2008

2nd ed

  • : cloth

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注記

Rev. ed. of: Applied regression analysis, linear models, and related methods, c1997

Includes bibliographical references (p. 638-647) and indexes

内容説明・目次

内容説明

The new Second Edition will extend coverage to regression models such as: generalized linear models; limited-dependent-variable-models; mixed models and Cox regression among other methods.

目次

Preface 1 - Statistical Models and Social Science I - DATA CRAFT 2 - What is Regression Analysis? 3 - Examining Data 4 - Transforming Data II - LINEAR MODELS AND LEAST SQUARES 5 - Linear Least-Squares Regression 6 - Statistical Inference for Regression 7 - Dummy-Variable Regression 8 - Analysis of Variance 9 - Statistical Theory for Linear Models 10 - The Vector Geometry of Linear Models III - LINEAR-MODEL DIAGNOSTICS 11 - Unusual and Influential Data 12 - Diagnosing Non-Normality, Nonconstant Error Variance, and Nonlinearity 13 - Collinearity and its Purported Remedies IV - GENERALIZED LINEAR MODELS 14 - Logit and Probit Models 15 - Generalized Linear Models V - EXTENDING LINEAR AND GENERALIZED LINEAR MODELS 16 - Time-Series Regression 17 - Nonlinear Regression 18 - Nonparametric Regression 19 - Robust Regression 20 - Missing Data in Regression Models 21 - Bootstrapping Regression Models 22 - Model Selection, Averaging, and Validation A Notation References

「Nielsen BookData」 より

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