Forecasting Visitor Arrivals at Tourist Attractions: A Time Series Framework with the N-BEATS for Sustainable Tourism
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Keywords
sustainable tourism; tourist arrivals; time series analysis; tourism demand forecasting; N-BEATS; deep learning;All these keywords.
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