Learning about Spatial and Temporal Proximity using Tree-Based Methods
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-à-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.
Year of publication: |
2022
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Authors: | Levin, Ines |
Published in: |
Statistics, Politics and Policy. - De Gruyter, ISSN 2151-7509, ZDB-ID 2598407-X. - Vol. 13.2022, 1, p. 73-95
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Publisher: |
De Gruyter |
Subject: | spatial proximity | distance measures | machine learning | decision trees | ensemble methods | immigration reform | gun control |
Saved in:
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