IEEE Access (Jan 2020)

Improving Time-Series Demand Modeling in Hospitality Business by Analytics of Public Event Datasets

  • Mariusz Kamola,
  • Piotr Arabas

DOI
https://doi.org/10.1109/ACCESS.2020.2980501
Journal volume & issue
Vol. 8
pp. 53666 – 53677

Abstract

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Forecasting occupancy in hospitality business with autoregressive time-series models does not intercept occasional impact of public events. Our goal was to find appropriate datasets and enrich existing predictive models to account for rare and explicable demand surges. The paper proposes processing framework: data source types and formats, and forecast algorithms based on natural language processing. The study shows that classical models using word collocations outperform state of the art deep neural networks. Also, the collocations that turn out to be important, occupy certain locations in a graph that represents the natural language. The findings may result in yet improved forecasts, leading to smarter offer pricing and, finally, increased competitiveness in hospitality business. They may also serve public interest in areas like parking management or public transport planning.

Keywords