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arxiv: 1905.07964 · v1 · pith:ER7WJMRUnew · submitted 2019-05-20 · ⚛️ physics.soc-ph · cs.CY

Diagnosing the performance of human mobility models at small spatial scales using volunteered geographic information

classification ⚛️ physics.soc-ph cs.CY
keywords modelsdifferentmobilitypopulationareasgeographichumanmacro-level
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Accurate modelling of local population movement patterns is a core contemporary concern for urban policymakers, affecting both the short term deployment of public transport resources and the longer term planning of transport infrastructure. Yet, while macro-level population movement models (such as the gravity and radiation models) are well developed, micro-level alternatives are in much shorter supply, with most macro-models known to perform badly in smaller geographic confines. In this paper we take a first step to remedying this deficit, by leveraging two novel datasets to analyse where and why macro-level models of human mobility break down at small scales. In particular, we use an anonymised aggregate dataset from a major mobility app and combine this with freely available data from OpenStreetMap concerning land-use composition of different areas around the county of Oxfordshire in the United Kingdom. We show where different models fail, and make the case for a new modelling strategy which moves beyond rough heuristics such as distance and population size towards a detailed, granular understanding of the opportunities presented in different areas of the city.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Estimating Traffic Disruption Patterns with Volunteered Geographic Information

    cs.CY 2019-07 unverdicted novelty 5.0

    Linear regressions on OpenStreetMap land-use and point-of-interest features explain over half the variation in traffic volume and disruptions at 6500 points in 112 Oxfordshire regions, with granular POI data outperfor...