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Evaluating prediction of COVID-19 at provincial level of South Africa: a statistical perspective

Version 2 2024-05-31, 00:59
Version 1 2023-08-25, 05:32
journal contribution
posted on 2024-05-31, 00:59 authored by M Arashi, A Bekker, M Salehi, S Millard, Tanita BothaTanita Botha, M Golpaygani
What is the impact of COVID-19 on South Africa? This paper envisages to assist researchers in battling of the COVID-19 pandemic focusing on South Africa. This paper focuses on the spread of the disease by applying heatmap retrieval of hotspot areas, and spatial analysis is carried out using the Moran index. For capturing spatial autocorrelation between the provinces of South Africa, the adjacent as well as the geographical distance measures are used as weight matrix for both absolute and relative counts. Furthermore, generalized logistic growth curve modelling is used for prediction of the COVID-19 spread. We expect this data-driven modelling to provide some insights into hotspot identification and timeous action controlling the spread of the virus.

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Location

Berlin, Germany

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Journal

Environmental Science and Pollution Research

Volume

29

Pagination

21289-21302

ISSN

0944-1344

eISSN

1614-7499

Issue

15

Publisher

Springer

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