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MATHEMATICAL MODELLING AND STATISTICAL ANALYSIS IN POST - COVID-19 TOURISM RECOVERY

  • Marija Paunovic Faculty of Hotel Management and Tourism, University of Kragujevac
Keywords: Mathematical modelling, Markov chain, Stringency Index, forecasting, pandemic effects, government policy

Abstract

The COVID-19 pandemic, along with responses to pandemic control in the form of a national blockade with widespread application of travel restrictions, has made tourism one of the most vulnerable sectors. With increasing mitigation measures in many countries regarding tourism and travel restrictions in some segments, different tourism recovery programs are being launched according to the specifics of each country. The paper will consider various proposed measures through different impact factors set in order to accelerate the recovery of the tourism sector. Selected mathematical models will be presented and discussed.

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Published
2021-06-03
How to Cite
Paunovic, M. (2021). MATHEMATICAL MODELLING AND STATISTICAL ANALYSIS IN POST - COVID-19 TOURISM RECOVERY. Tourism International Scientific Conference Vrnjačka Banja - TISC, 6(1), 334-349. https://doi.org/10.52370/TISC21334MP