Handbook of Regression Analysis With Applications in R. Samprit Chatterjee

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      Table of Contents

      1  Cover

      2  Preface to the Second Edition

      3  Preface to the First Edition How to Use This Book

      4  PART ONE: The Multiple Linear Regression Model CHAPTER ONE: Multiple Linear Regression 1.1 Introduction 1.2 Concepts and Background Material 1.3 Methodology 1.4 Example — Estimating Home Prices 1.5 Summary CHAPTER TWO: Model Building 2.1 Introduction 2.2 Concepts and Background Material 2.3 Methodology 2.4 Indicator Variables and Modeling Interactions 2.5 Summary

      5  PART TWO: Addressing Violations of Assumptions CHAPTER THREE: Diagnostics for Unusual Observations 3.1 Introduction 3.2 Concepts and Background Material 3.3 Methodology 3.4 Example — Estimating Home Prices (continued) 3.5 Summary CHAPTER FOUR: Transformations and Linearizable Models 4.1 Introduction 4.2 Concepts and Background Material: The Log‐Log Model 4.3 Concepts and Background Material: Semilog Models 4.4 Example — Predicting Movie Grosses After One Week 4.5 Summary CHAPTER FIVE: Time Series Data and Autocorrelation 5.1 Introduction 5.2 Concepts and Background Material 5.3 Methodology: Identifying Autocorrelation 5.4 Methodology: Addressing Autocorrelation 5.5 Summary

      6  PART THREE: Categorical Predictors CHAPTER SIX: Analysis of Variance 6.1 Introduction 6.2 Concepts and Background Material 6.3 Methodology 6.4 Example — DVD Sales of Movies 6.5 Higher‐Way ANOVA 6.6 Summary CHAPTER SEVEN: Analysis of Covariance 7.1 Introduction 7.2 Methodology 7.3 Example — International Grosses of Movies 7.4 Summary

      7  PART FOUR: Non‐Gaussian Regression Models CHAPTER EIGHT: Logistic Regression 8.1 Introduction 8.2 Concepts and Background Material 8.3 Methodology 8.4 Example — Smoking and Mortality 8.5 Example — Modeling Bankruptcy 8.6 Summary CHAPTER NINE: Multinomial Regression 9.1 Introduction 9.2 Concepts and Background Material 9.3 Methodology 9.4 Example — City Bond Ratings 9.5 Summary CHAPTER TEN: Count Regression 10.1 Introduction 10.2 Concepts and Background Material 10.3 Methodology 10.4 Overdispersion and Negative Binomial Regression 10.5 Example — Unprovoked Shark Attacks in Florida 10.6 Other Count Regression Models 10.7 Poisson Regression and Weighted Least Squares 10.8 Summary CHAPTER

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