Published June 2, 2024 | Version v1
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Enhancing Educational and Tourism Applications through Predictive Modeling of Cultural Heritage Site Visitation: use of Arima and autoregressive models

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Description

This study focuses on the use of ARIMA and Autoregressive (AR) models to predict visitor flow to Civil War shelters in Alicante, highlighting seasonal patterns and differences among various visitor groups, with an enriching approach towards educational and tourism applications. Through a retrospective longitudinal design covering from August 2023 to January 2024, it analyzes the time series of visits, differentiating between the general public and school groups, as well as examining geographical demand. The research emphasizes the effectiveness and simplicity of the ARIMA(0, 0, 0) model with Logarithmic Transformation in modeling time series, while the AR(6) model proves indispensable for capturing short-term temporal dependencies. Despite the usefulness of these forecasts for future planning, the existence of uncertainties highlights the importance of adopting flexible management approaches and incorporating additional variables to refine predictions. This approach not only improves the management of visitor flows but also significantly contributes to the creation of more effective educational and tourism strategies, promoting the sustainability and appreciation of cultural heritage.

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Additional details

Dates

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2024

References

  • Azad AS, Sokkalingam R, Daud H, Adhikary SK, Khurshid H, Mazlan SNA, et al. Water Level Prediction through Hybrid SARIMA and ANN Models Based on Time Series Analysis: Red Hills Reservoir Case Study. Sustain Sci Pract Policy [Internet]. 2022 Feb 5 [cited 2024 Mar 3];14(3):1843. Available from: https://www.mdpi.com/2071-1050/14/3/1843
  • Bottomley C, Ooko M, Gasparrini A, Keogh RH. In praise of Prais-Winsten: An evaluation of methods used to account for autocorrelation in interrupted time series. Stat Med [Internet]. 2023 Apr 15;42(8):1277–88. Available from: http://dx.doi.org/10.1002/sim.9669