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Informationen zum Autor Judea Pearl, Computer Science and Statistics, University of California, Los Angeles, USA. Madelyn Glymour, Philosophy, Carnegie Mellon University, Pittsburgh, USA. Nicholas P. Jewell, Biostatistics and Statistics, University of California, Berkeley, USA. Klappentext Many of the concepts and terminology surrounding modern causal inference can be quite intimidating to the novice. Judea Pearl presents a book ideal for beginners in statistics, providing a comprehensive introduction to the field of causality. Examples from classical statistics are presented throughout to demonstrate the need for causality in resolving decision-making dilemmas posed by data. Causal methods are also compared to traditional statistical methods, whilst questions are provided at the end of each section to aid student learning. Zusammenfassung Many of the concepts and terminology surrounding modern causal inference can be quite intimidating to the novice. Judea Pearl presents a book ideal for beginners in statistics, providing a comprehensive introduction to the field of causality. Inhaltsverzeichnis About the Authors ixPreface xiList of Figures xvAbout the Companion Website xix1 Preliminaries: Statistical and Causal Models 11.1 Why Study Causation 11.2 Simpson's Paradox 11.3 Probability and Statistics 71.3.1 Variables 71.3.2 Events 81.3.3 Conditional Probability 81.3.4 Independence 101.3.5 Probability Distributions 111.3.6 The Law of Total Probability 111.3.7 Using Bayes' Rule 131.3.8 Expected Values 161.3.9 Variance and Covariance 171.3.10 Regression 201.3.11 Multiple Regression 221.4 Graphs 241.5 Structural Causal Models 261.5.1 Modeling Causal Assumptions 261.5.2 Product Decomposition 292 Graphical Models and Their Applications 352.1 Connecting Models to Data 352.2 Chains and Forks 352.3 Colliders 402.4 d-separation 452.5 Model Testing and Causal Search 483 The Effects of Interventions 533.1 Interventions 533.2 The Adjustment Formula 553.2.1 To Adjust or not to Adjust? 583.2.2 Multiple Interventions and the Truncated Product Rule 603.3 The Backdoor Criterion 613.4 The Front-Door Criterion 663.5 Conditional Interventions and Covariate-Specific Effects 703.6 Inverse Probability Weighing 723.7 Mediation 753.8 Causal Inference in Linear Systems 783.8.1 Structural versus Regression Coefficients 803.8.2 The Causal Interpretation of Structural Coefficients 813.8.3 Identifying Structural Coefficients and Causal Effect 833.8.4 Mediation in Linear Systems 874 Counterfactuals and Their Applications 894.1 Counterfactuals 894.2 Defining and Computing Counterfactuals 914.2.1 The Structural Interpretation of Counterfactuals 914.2.2 The Fundamental Law of Counterfactuals 934.2.3 From Population Data to Individual Behavior - An Illustration 944.2.4 The Three Steps in Computing Counterfactuals 964.3 Nondeterministic Counterfactuals 984.3.1 Probabilities of Counterfactuals 984.3.2 The Graphical Representation of Counterfactuals 1014.3.3 Counterfactuals in Experimental Settings 1034.3.4 Counterfactuals in Linear Models 1064.4 Practical Uses of Counterfactuals 1074.4.1 Recruitment to a Program 1074.4.2 Additive Interventions 1094.4.3 Personal Decision Making 1114.4.4 Sex Discrimination in Hiring 1134.4.5 Mediation and Path-disabling Interventions 1144.5 Mathematical Tool Kits for Attribution and Mediation 1164.5.1 A Tool Kit for Attribution and Probabilities of Causation 1164.5.2 A Tool Kit for Mediation 120References 127Index 133...