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Tourism demand and the COVID-19 pandemic: an LSTM approach

    1. [1] Zayed University

      Zayed University

      Emiratos Árabes Unidos

    2. [2] Gdańsk University of Technology

      Gdańsk University of Technology

      Gdańsk, Polonia

  • Localización: Tourism recreation research, ISSN 0250-8281, Vol. 46, Nº. 2, 2021, págs. 175-187
  • Idioma: inglés
  • Texto completo no disponible (Saber más ...)
  • Resumen
    • This paper investigates the expected results of the current COVID-19 outbreak to arrivals of Chinese tourists to the USA and Australia. The growing market share of Chinese tourism and the fact that the county was the first to experience the pandemic make China a suitable proxy for predictions on global tourism. We employ data from the 2003 SARS outbreak to train a deep learning artificial neural network named Long Short Term Memory (LSTM). The neural network is calibrated for the particulars of the current pandemic. Our findings, which are cross-validated using backtesting, suggest that recovery of arrivals to pre-crisis levels can take from 6 to 12 months and this can have significant adverse effects not only on the tourism industry but also on other sectors that interact with it.


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