2021
DOI: 10.48550/arxiv.2105.02752
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Modeling the geospatial evolution of COVID-19 using spatio-temporal convolutional sequence-to-sequence neural networks

Abstract: Europe was hit hard by the COVID-19 pandemic and Portugal was one of the most affected countries, having suffered three waves in the first twelve months. Approximately between Jan 19th and Feb 5th 2021 Portugal was the country in the world with the largest incidence rate, with 14-days incidence rates per 100,000 inhabitants in excess of 1000. Despite its importance, accurate prediction of the geospatial evolution of COVID-19 remains a challenge, since existing analytical methods fail to capture the complex dyn… Show more

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Cited by 2 publications
(1 citation statement)
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“…In [70,71], the authors analyze several allocation and distribution strategies for COVID-19 vaccines, and the design of a robust and resilient vaccine distribution network has been defined in [72,73]. Geostatistical modeling has been used to take into account classical logistic constraints (i.e., from the Operations Research domain) and global/local geographical peculiarities, which can greatly vary across different areas (inter-area variability) and within the same area (intra-area variability) [74,75]. Typical constraints and features of this problem, which have to be taken into consideration during the conceptualization and modeling phases, are as follows [76]:…”
Section: Resultsmentioning
confidence: 99%
“…In [70,71], the authors analyze several allocation and distribution strategies for COVID-19 vaccines, and the design of a robust and resilient vaccine distribution network has been defined in [72,73]. Geostatistical modeling has been used to take into account classical logistic constraints (i.e., from the Operations Research domain) and global/local geographical peculiarities, which can greatly vary across different areas (inter-area variability) and within the same area (intra-area variability) [74,75]. Typical constraints and features of this problem, which have to be taken into consideration during the conceptualization and modeling phases, are as follows [76]:…”
Section: Resultsmentioning
confidence: 99%