現在位置: 機構典藏 > 詳目


    篇名/題名:The good, the bad and the ugly on COVID-19 tourism recovery
    摘要:This paper is to produce different scenarios in forecasts for international tourism demand, in light of the COVID-19 pandemic. By implementing two distinct methodologies (the Long Short Term
    Memory neural network and the Generalized Additive Model), based on recent crises, we are able to calculate the expected drop in the international tourist arrivals for the next 12 months. We use a
    rolling-window testing strategy to calculate accuracy metrics and show that even though all models have comparable accuracy, the forecasts produced vary significantly according to the training data set, a finding that should be alarming to researchers. Our results indicate that the drop in tourist arrivals can range between 30.8% and 76.3% and will persist at least until June 2021.
    類型:期刊論文
    著作語言:英文
    關鍵詞:Coronavirus Tourism demand Deep learning Generalized additive model Pandemia
    作者:作者:
     黃宗成、Anestis Fotiadis、Stathis Polyzos
    學校系所:生活服務產業系
    卷期:Annals of Tourism Research;vol. 87 卷
    頁碼:103117