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  4. Using Machine Learning to Predict POI Occupancy to Reduce Overcrowding
 
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2022
Conference Paper
Title

Using Machine Learning to Predict POI Occupancy to Reduce Overcrowding

Abstract
Due to the rapid growth of the tourism industry, associated effects like overcrowding, overtourism, and increasing greenhouse gas emissions lead to unsustainable development. A prerequisite for avoiding those adverse effects is the prediction of occupancy. The present study elaborates on the applicability and performance of various prediction models by taking a case study of beach occupancy data in Scharbeutz, Germany. The case study compares different machine learning models once as supervised machine learning models and once as time series models with a persistence model. XGBoost and Random Forest as time series demonstrate the most accurate prediction, followed by the supervised XGBoost model. However, the short prediction span of time series models is a disadvantage for longer-term visitor management to avoid the explained unsustainable effects through steering measures, so depending on the use case, the XGBoost model is to be favoured.
Author(s)
Bollenbach, Jessica
University of Applied Sciences Kempten
Neubig, Stefan
TU München  
Hein, Andreas
TU München  
Keller, Robert  
University of Applied Sciences Kempten
Krcmar, Helmut
TU München  
Mainwork
INFORMATIK 2022. Informatik in den Naturwissenschaften  
Conference
Gesellschaft für Informatik (Jahrestagung) 2022  
DOI
10.18420/inf2022_34
Language
English
Fraunhofer-Institut für Angewandte Informationstechnik FIT  
Keyword(s)
  • Beach Occupancy

  • Time Series Forecasting

  • XGBoost

  • Random Forest

  • Support Vector Regression

  • SARIMA

  • Tourism Demand

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