匹配尾迹分析:寻找时空事件数据中的因果关系

Sebastian Schutte, K. Donnay
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引用次数: 35

摘要

本文介绍了一种从时空事件数据中寻找因果关系的新方法,该方法在冲突研究、犯罪学和流行病学中具有潜在的应用前景。该方法分析了不同类型的干预如何影响反应性事件的后续水平。滑动时空窗口和统计匹配用于稳健和清晰的因果推理。因此,在事件数据分析中建立因果关系的两个描述良好的经验问题得到了解决:可修改的面积单位问题和选择偏差。本文正式介绍了该方法,并在蒙特卡罗模拟中证明了其有效性,并通过一个经验例子展示了在伊拉克不分青红皂白的叛乱暴力事件中,向美军提供民事援助的实例是如何变化的。
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Matched Wake Analysis: Finding Causal Relationships in Spatiotemporal Event Data
This paper introduces a new method for finding causal relationships in spatiotemporal event data with potential applications in conflict research, criminology, and epidemiology. The method analyzes how different types of interventions affect subsequent levels of reactive events. Sliding spatiotemporal windows and statistical matching are used for robust and clean causal inference. Thereby, two well-described empirical problems in establishing causal relationships in event data analysis are resolved: the modifiable areal unit problem and selection bias. The paper presents the method formally and demonstrates its effectiveness in Monte Carlo simulations and an empirical example by showing how instances of civilian assistance to US forces changed in response to indiscriminate insurgent violence in Iraq.
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