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| = 内容目录 = | | = 内容目录 = |
| + | Preface xi |
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| + | 1 Preliminaries: Statistical and Causal Models 1 |
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| + | 1.1 Why Study Causation 1 |
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| + | 1.2 Simpson’s Paradox 2 |
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| + | 1.3 Probability and Statistics 9 |
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| + | 1.3.1 Variables 10 |
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| + | 1.3.2 Events 11 |
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| + | 1.3.3 Conditional probability 11 |
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| + | 1.3.4 Independence 13 |
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| + | 1.3.5 Probability distributions 14 |
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| + | 1.3.6 The law of total probability 15 |
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| + | 1.3.7 Using Bayes’ rule 18 |
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| + | 1.3.8 Expected values 22 |
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| + | 1.3.9 Variance and covariance 24 |
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| + | 1.3.10 Regression 27 |
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| + | 1.3.11 Multiple regression 31 |
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| + | 1.4 Graphs 33 |
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| + | 1.5 Structural Causal Models 36 |
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| + | 1.5.1 Modeling causal assumptions 36 |
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| + | 1.5.2 Product decomposition 40 |
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| + | 2 Graphical Models and Their Applications 47 |
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| + | 2.1 Connecting Models to Data 47 |
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| + | 2.2 Chains and Forks 48 |
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| + | 2.3 Colliders 55 |
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| + | 2.4 ''d''-Separation 62 |
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| + | 2.5 Model Testing and Causal Search 66 |
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| + | 3 The Effects of Interventions 71 |
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| + | 3.1 Interventions 71 |
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| + | 3.2 The Adjustment Formula 74 |
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| + | 3.2.1 To adjust or not to adjust? 79 |
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| + | 3.2.2 Multiple interventions and the truncated product rule 81 |
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| + | 3.3 The Back-Door Criterion 82 |
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| + | 3.4 The Front-Door Criterion 89 |
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| + | 3.5 Conditional Interventions and Covariate-Specific Effects 95 |
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| + | 3.6 Inverse Probability Weighing 98 |
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| + | 3.7 Mediation 103 |
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| + | 3.8 Causal Inference in Linear Systems 107 |
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| + | 3.8.1 Structural vs. regression coefficients 110 |
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| + | 3.8.2 The causal interpretation of structural coefficients 111 |
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| + | 3.8.3 Identifying structural coefficients and causal effect 113 |
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| + | 3.8.4 Mediation in linear systems 119 |
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| + | 4 Counterfactuals and their Applications 123 |
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| + | 4.1 Counterfactuals 123 |
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| + | 4.2 Defining and Computing Counterfactuals 126 |
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| + | 4.2.1 The structural interpretation of counterfactuals 126 |
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| + | 4.2.2 The fundamental law of counterfactuals 130 |
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| + | 4.2.3 From population data to individual behavior – an illustration 131 |
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| + | 4.2.4 The three steps in computing counterfactuals 133 |
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| + | 4.3 Non-Deterministic Counterfactuals 136 |
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| + | 4.3.1 Probabilities of counterfactuals 136 |
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| + | 4.3.2 The Graphical representation of counterfactuals 141 |
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| + | 4.3.3 Counterfactuals in experimental settings 144 |
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| + | 4.3.4 Counterfactuals in linear models 147 |
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| + | 4.4 Practical uses of counterfactuals 149 |
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| + | 4.4.1 Recruitment to a program 149 |
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| + | 4.4.2 Additive interventions 152 |
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| + | 4.4.3 Personal decision making 155 |
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| + | 4.4.4 Sex discrimination in hiring 158 |
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| + | 4.4.5 Mediation and path-disabling interventions 159 |
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| + | 4.5 Mathematical Tool Kits for Attribution and Mediation 161 |
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| + | 4.5.1 A tool kit for attribution and probabilities of causation 162 |
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| + | 4.5.2 A tool kit for mediation 167 |
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| + | References 176 |
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| = 前言 = | | = 前言 = |