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A comprehensive approach to enhancing short-term hotel cancellation forecasts through dynamic machine learning models

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  • Apostolos Ampountolas
  • Mark Legg

Abstract

Enhancing the accuracy of short-term forecasts for cancellation rates offers revenue managers the opportunity to formulate a pricing strategy for the upcoming day, yielding favorable economic outcomes. This study proposes a methodology based on dynamic models utilizing machine learning methods such as LightGBM, XGBoost, Random Forest, and ANN-MLP, highlighting the importance of data dimensionality reduction while using higher-performing variables to improve predictive accuracy and stability. Notably, lagged variables within a few days of the forecasted date and reservations made through OTAs and BAR-rated reservations exhibit significant predictive power. The results indicate that artificial neural network multi-layer perceptron (ANN-MLP) outperforms other models, especially in longer forecast horizons. The study recommends adaptable strategies considering historical data and temporal trends and leveraging ANN-MLP for superior accuracy. The findings offer valuable insights for industry practitioners, providing a nuanced understanding of cancellation patterns and suggesting strategies to optimize cancellation prediction models in a competitive marketplace.

Suggested Citation

  • Apostolos Ampountolas & Mark Legg, 2026. "A comprehensive approach to enhancing short-term hotel cancellation forecasts through dynamic machine learning models," Tourism Economics, , vol. 32(2), pages 321-341, March.
  • Handle: RePEc:sae:toueco:v:32:y:2026:i:2:p:321-341
    DOI: 10.1177/13548166251318768
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    References listed on IDEAS

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