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xi | |
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xii | |
Preface |
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xiii | |
The Book in a Nutshell |
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xvii | |
Introduction |
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1 | (8) |
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3 | (3) |
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6 | (3) |
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Part I Conceptual and Methodological Clarifications |
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9 | (40) |
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1 The Diversity of Views on Causality and Mechanisms |
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11 | (14) |
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11 | (2) |
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1.2 Dependence and Production Accounts of Causality |
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13 | (4) |
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1.3 Horizontal and Vertical Accounts of Mechanisms |
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17 | (5) |
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1.3.1 Vertical versus Horizontal View |
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19 | (2) |
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1.3.2 Horizontal versus Vertical View |
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21 | (1) |
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1.4 Causality and Mechanism Accounts, and ABM's Perception |
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22 | (3) |
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2 Agent-based Models and the Vertical View on Mechanism |
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25 | (8) |
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2.1 ABMs and Object-oriented Programming |
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26 | (1) |
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2.2 ABMs and Heterogeneity |
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27 | (1) |
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2.3 ABMs and Micro-foundations |
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28 | (1) |
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2.4 ABMs and Interdependence |
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28 | (1) |
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29 | (1) |
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2.6 ABMs and Multi-level Settings |
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30 | (1) |
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2.7 Variables within Statistical Methods and ABMs |
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31 | (2) |
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3 The Diversity of Agent-based Models |
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33 | (16) |
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3.1 Abstract versus Data-driven ABMs: An Old Opposition |
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34 | (2) |
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3.2 Abstract versus Data-driven ABMs: Recent Trends |
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36 | (2) |
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3.3 Theoretical, Input, and Output Realism |
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38 | (2) |
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3.4 Different Paths to More Realistic ABMs |
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40 | (9) |
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3.4.1 "Theoretically Blind" Data-driven ABMs |
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41 | (4) |
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3.4.2 "Theoretically Informed" Data-driven ABMs |
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45 | (4) |
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Part 2 Data and Arguments in Causal Inference |
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49 | (66) |
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4 Agent-based Models and Causal Inference |
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51 | (18) |
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4.1 ABMs as Inferential Devices |
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52 | (7) |
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4.1.1 The Role of "Theoretical Realism" |
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52 | (2) |
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4.1.2 The Role of "Output Realism" and Empirical Validation |
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54 | (1) |
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4.1.3 The Role of "Input Realism" and Empirical Calibration |
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55 | (2) |
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4.1.4 In Principle Conditions for Causally Relevant ABMs |
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57 | (1) |
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4.1.5 Can Data-driven ABMs Produce Information on Their Own? |
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58 | (1) |
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4.2 In Practice Limitations |
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59 | (3) |
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4.2.1 ABMs' Granularity and Data Availability |
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59 | (2) |
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4.2.2 ABM's Granularity and Data Embeddedness |
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61 | (1) |
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4.3 From-Within-the-Method Reliability Tools |
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62 | (7) |
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4.3.1 Sensitivity Analysis |
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64 | (1) |
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4.3.2 Robustness Analysis |
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65 | (1) |
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4.3.3 Dispersion Analysis |
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65 | (1) |
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66 | (3) |
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5 Causal Inference in Experimental and Observational Methods |
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69 | (26) |
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5.1 Causal Inference: Cautionary Tales |
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71 | (2) |
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5.2 In Practice Untestable Assumptions |
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73 | (6) |
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5.2.1 RCTs and Heterogeneity |
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73 | (1) |
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5.2.2 IVs and the "Relevance" Condition |
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74 | (2) |
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5.2.3 DAGs, Causal Discovery Algorithms and Graph Indistinguishability |
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76 | (3) |
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5.3 In Principle Untestable Assumptions |
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79 | (6) |
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5.3.1 RCTs and "Stable Unit Treatment Value Assumption" (SUTVA) |
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79 | (2) |
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5.3.2 IVs and the "Exclusion" Condition |
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81 | (2) |
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5.3.3 DAGs and Strategies for Causal Identification |
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83 | (1) |
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5.3.3.1 DAGs and the "Backdoor" Criterion |
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83 | (1) |
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5.3.3.2 DAGs and the "Front Door" Criterion |
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84 | (1) |
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5.4 Are ABMs, Experimental and Observational Methods Fundamentally Similar? |
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85 | (9) |
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5.4.1 Objection 1: ABM Lacks "Formal" Assumptions |
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86 | (3) |
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5.4.2 Objection 2: ABM Lacks "Materiality" |
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89 | (2) |
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5.4.3 Objection 3: ABMs Lack "Robustness" |
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91 | (3) |
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5.5 A Common Logic: "Abduction" |
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94 | (1) |
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6 Method Diversity and Causal Inference |
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95 | (20) |
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6.1 Causal Pluralism, Causal Exclusivism, and Evidential Pluralism |
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97 | (2) |
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6.2 A Pragmatist Account of Evidence |
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99 | (2) |
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6.3 Evidential Pluralism and "Coherentism" |
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101 | (3) |
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6.4 When is Diverse Evidence Most Relevant? |
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104 | (2) |
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6.5 Examples of Method Synergies |
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106 | (9) |
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6.5.1 Obesity: ABMs and Regression Models |
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106 | (3) |
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6.5.2 Network Properties: ABMs and SIENA Models |
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109 | (2) |
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6.5.3 HIV prevalence: ABMs and RCTs |
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111 | (2) |
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6.5.4 HIV treatments: ABMs and DAG-based identification strategies |
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113 | (2) |
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115 | (12) |
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116 | (5) |
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1.1 Causation is Not Constitution |
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117 | (1) |
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1.2 Lack of a Specific Research Strategy |
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118 | (1) |
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1.3 A Limited Methodological Spectrum |
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119 | (2) |
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121 | (6) |
References |
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127 | (22) |
Index |
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149 | |