Produktbild: Handbook of Regression Analysis

Handbook of Regression Analysis

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Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

26.12.2012

Verlag

John Wiley & Sons Inc

Seitenzahl

252

Maße (L/B/H)

24/16,1/1,8 cm

Gewicht

472 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-470-88716-5

Beschreibung

Rezension

"Overall, a valuable user-friendly resource. Summing Up: Highly recommended. Upper-division undergraduates through professionals." (Choice, 1 October 2013)
 
"All in all, I also very much like the Handbook and if I were not to retire this year, I would be happy to tell my students that it is a very nice and handy book." (International Statistical Review, 15 February 2013)

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

26.12.2012

Verlag

John Wiley & Sons Inc

Seitenzahl

252

Maße (L/B/H)

24/16,1/1,8 cm

Gewicht

472 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-470-88716-5

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Handbook of Regression Analysis
  • Preface xi

    Part I The Multiple Linear Regression Model

    1 Multiple Linear Regression 3

    1.1 Introduction 3

    1.2 Concepts and Background Material 4

    1.2.1 The Linear Regression Model 4

    1.2.2 Estimation Using Least Squares 5

    1.2.3 Assumptions 8

    1.3 Methodology 9

    1.3.1 Interpreting Regression Coefficients 9

    1.3.2 Measuring the Strength of the Regression Relationship 10

    1.3.3 Hypothesis Tests and Confidence Intervals for _ 12

    1.3.4 Fitted Values and Predictions 13

    1.3.5 Checking Assumptions Using Residual Plots 14

    1.4 Example -- Estimating Home Prices 16

    1.5 Summary 19

    2 Model Building 23

    2.1 Introduction 23

    2.2 Concepts and Background Material 24

    2.2.1 Using hypothesis tests to compare models 24

    2.2.2 Collinearity 26

    2.3 Methodology 29

    2.3.1 Model Selection 29

    2.3.2 Example--Estimating Home Prices (continued) 31

    2.4 Indicator Variables and Modeling Interactions 38

    2.4.1 Example--Electronic Voting and the 2004 Presidential Election 40

    2.5 Summary 46

    Part II Addressing Violations of Assumptions

    3 Diagnostics for Unusual Observations 53

    3.1 Introduction 53

    3.2 Concepts and Background Material 54

    3.3 Methodology 56

    3.3.1 Residuals and Outliers 56

    3.3.2 Leverage Points 57

    3.3.3 Influential Points and Cook's Distance 58

    3.4 Example -- Estimating Home Prices (continued) 60

    3.5 Summary 64

    4 Transformations and Linearizable Models 67

    4.1 Introduction 67

    4.2 Concepts and Background Material: the Log-Log Model 69

    4.3 Concepts and Background Material: Semilog models 69

    4.3.1 Logged response variable 70

    4.3.2 Logged predictor variable 70

    4.4 Example -- Predicting Movie Grosses After One Week 71

    4.5 Summary 78

    5 Time Series Data and Autocorrelation 81

    5.1 Introduction 81

    5.2 Concepts and Background Material 83

    5.3 Methodology: Identifying Autocorrelation 85

    5.3.1 The Durbin-Watson Statistic 86

    5.3.2 The Autocorrelation Function (ACF) 87

    5.3.3 Residual Plots and the Runs Test 87

    5.4 Methodology: Addressing Autocorrelation 88

    5.4.1 Detrending and Deseasonalizing 88

    5.4.2 Example -- e-Commerce Retail Sales 89

    5.4.3 Lagging and Differencing 96

    5.4.4 Example -- Stock Indexes 96

    5.4.5 Generalized Least Squares (GLS): the Cochrane-Orcutt Procedure 101

    5.4.6 Example -- Time Intervals Between Old Faithful Eruptions 104

    5.5 Summary 107

    Part III Categorical Predictors

    6 Analysis of Variance 113

    6.1 Introduction 113

    6.2 Concepts and Background Material 114

    6.2.1 One-way ANOVA 114

    6.2.2 Two-way ANOVA 115

    6.3 Methodology 117

    6.3.1 Codings for categorical predictors 117

    6.3.2 Multiple comparisons 122

    6.3.3 Levene's test and weighted least squares 124

    6.3.4 Membership in multiple groups 127

    6.4 Example -- DVD Sales of Movies 129

    6.5 Higher-Way ANOVA 134

    6.6 Summary 136

    7 Analysis of Covariance 139

    7.1 Introduction 139

    7.2 Methodology 139

    7.2.1 Constant shift models 139

    7.2.2 Varying slope models 141

    7.3 Example -- International Grosses of Movies 141

    7.4 Summary 145

    Part IV Other Regression Models

    8 Logistic Regression 149

    8.1 Introduction 149

    8.2 Concepts and Background Material 151

    8.2.1 The logit response function 151

    8.2.2 Bernoulli and binomial random variables 152

    8.2.3 Prospective and retrospective designs 153

    8.3 Methodology 156

    8.3.1 Maximum likelihood estimation 156

    8.3.2 Inference, model comparison, and model selection 157

    8.3.3 Goodness-of-Fit 159

    8.3.4 Measures of association and classification accuracy 161

    8.3.5 Diagnostics 163

    8.4 Example -- Smoking and Mortality 163

    8.5 Example -- Modeling Bankruptcy 167

    8.6 Summary 173

    9 Multinomial Regression 177

    9.1 Introduction 177

    9.2 Concepts and Background Material 178

    9.2.1 Nominal Response Variable 178

    9.2.2 Ordinal Response Variable 180

    9.3 Methodology 182

    9.3.1 Estimation 182

    9.3.2 Inference, model comparisons, and strength of fit 183

    9.3.3 Lack of fit and violations of assumptions 184

    9.4 Example -- City Bond Ratings 185

    9.5 Summary 189

    10 Count Regression 191

    10.1 Introduction 191

    10.2 Concepts and Background Material 192

    10.2.1 The Poisson random variable 192

    10.2.2 Generalized linear models 193

    10.3 Methodology 194

    10.3.1 Estimation and inference 194

    10.3.2 Offsets 195

    10.4 Overdispersion and Negative Binomial Regression 196

    10.4.1 Quasi-likelihood 196

    10.4.2 Negative Binomial Regression 197

    10.5 Example -- Unprovoked Shark Attacks in Florida 198

    10.6 Other Count Regression Models 206

    10.7 Poisson Regression and Weighted Least Squares 208

    10.7.1 Example - International Grosses of Movies (continued) 209

    10.8 Summary 211

    11 Nonlinear Regression 215

    11.1 Introduction 215

    11.2 Concepts and Background Material 216

    11.3 Methodology 218

    11.3.1 Nonlinear least squares estimation 218

    11.3.2 Inference for nonlinear regression models 219

    11.4 Example -- Michaelis-Menten Enzyme Kinetics 220

    11.5 Summary 225

    Bibliography 227

    Index 231