4.0 Article

Modelling Representative Population Mobility for COVID-19 Spatial Transmission in South Africa

Journal

FRONTIERS IN BIG DATA
Volume 4, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fdata.2021.718351

Keywords

COVID-19; spatial; mobility; spatial weight matrices; principal component analysis; hierarchical clustering

Funding

  1. National Research Foundation (NRF)
  2. Canadas International Development Research Centre (IDRC) [109559-001]

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The COVID-19 pandemic has changed people's lives globally, emphasizing the importance of studying human mobility patterns for understanding virus transmission. This paper compares different mobility data sources and provides insights on when to choose a particular data source through hierarchical clustering analysis.
The COVID-19 pandemic starting in the first half of 2020 has changed the lives of everyone across the world. Reduced mobility was essential due to it being the largest impact possible against the spread of the little understood SARS-CoV-2 virus. To understand the spread, a comprehension of human mobility patterns is needed. The use of mobility data in modelling is thus essential to capture the intrinsic spread through the population. It is necessary to determine to what extent mobility data sources convey the same message of mobility within a region. This paper compares different mobility data sources by constructing spatial weight matrices at a variety of spatial resolutions and further compares the results through hierarchical clustering. We consider four methods for constructing spatial weight matrices representing mobility between spatial units, taking into account distance between spatial units as well as spatial covariates. This provides insight for the user into which data provides what type of information and in what situations a particular data source is most useful.

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