Learning about Spatial and Temporal Proximity using Tree-Based Methods

Ines Levin
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Abstract

Learning about the relationship between distance to landmarks and events and phenomena of interest is a multi-faceted problem, as it may require taking into account multiple dimensions, including: spatial position of landmarks, timing of events taking place over time, and attributes of occurrences and locations. Here I show that tree-based methods are well suited for the study of these questions as they allow exploring the relationship between proximity metrics and outcomes of interest in a non-parametric and data-driven manner. I illustrate the usefulness of tree-based methods vis-\`a-vis conventional regression methods by examining the association between: (i) distance to border crossings along the US-Mexico border and support for immigration reform, and (ii) distance to mass shootings and support for gun control.
利用基于树的方法学习空间和时间接近性
了解地标距离与事件和感兴趣的现象之间的关系是一个多方面的问题,因为它可能需要考虑多个维度,包括:地标的空间位置、事件发生的时间、事件发生的属性和地点。我通过研究以下两个方面之间的关系,证明了基于树的方法相对于传统回归方法的实用性:(i)与美国-墨西哥边境过境点的距离与对移民改革的支持之间的关系;(ii)与大规模枪击事件的距离与对枪支管制的支持之间的关系。
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