2023
DOI: 10.1108/tr-04-2023-0230
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Improved tourism demand forecasting with CIR# model: a case study of disrupted data patterns in Italy

Michele Bufalo,
Giuseppe Orlando

Abstract: Purpose This study aims to predict overnight stays in Italy at tourist accommodation facilities through a nonlinear, single factor, stochastic model called CIR#. The contribution of this study is twofold: in terms of forecast accuracy and in terms of parsimony (both from the perspective of the data and the complexity of the modeling), especially when a regular pattern in the time series is disrupted. This study shows that the CIR# not only performs better than the considered baseline models but also has a much… Show more

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Cited by 11 publications
(1 citation statement)
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“…As previously noted, there is a shortage of current research on time series data in the tourism industry and forecasting (Onder and Wei 2022;Chen et al 2019;Wu et al 2023), particularly in Europe (Song et al 2019;Bufalo and Orlando 2023). As such, this study plays a crucial role in offering an overview of the importance of tourism demand (Archer 1980) and how it can be effectively managed during times of recession or unforeseen shocks (Li et al 2023) with an option of inclusive artificial intelligence models (Li et al 2024).…”
Section: Methodsmentioning
confidence: 94%
“…As previously noted, there is a shortage of current research on time series data in the tourism industry and forecasting (Onder and Wei 2022;Chen et al 2019;Wu et al 2023), particularly in Europe (Song et al 2019;Bufalo and Orlando 2023). As such, this study plays a crucial role in offering an overview of the importance of tourism demand (Archer 1980) and how it can be effectively managed during times of recession or unforeseen shocks (Li et al 2023) with an option of inclusive artificial intelligence models (Li et al 2024).…”
Section: Methodsmentioning
confidence: 94%