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Using Machine Learning to Predict POI Occupancy to Reduce Overcrowding

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2022

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Gesellschaft für Informatik, Bonn

Zusammenfassung

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.

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Bollenbach,Jessica; Neubig,Stefan; Hein,Andreas; Keller,Robert; Krcmar,Helmut (2022): Using Machine Learning to Predict POI Occupancy to Reduce Overcrowding. INFORMATIK 2022. DOI: 10.18420/inf2022_34. Gesellschaft für Informatik, Bonn. PISSN: 1617-5468. ISBN: 978-3-88579-720-3. pp. 393-408. Nachhaltige Wertschöpfungssysteme (NaWerSys) II. Hamburg. 26.-30. September 2022

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