Research Article

A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey

Volume: 8 Number: 2 December 25, 2020
EN

A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey

Abstract

Tourism revenues have important implications for tourism countries in terms of management of tourism-related policies. In order to accurately direct production planning, pricing, promotion and strategic marketing programs, labor and capital resources, accurate and reliable forecasts are needed. Forecasting the developments in tourism with scientific basis methods is an important guide for central and local public administration programs and tourism operators. When reviewing the literature, comparative studies on modeling and forecasting tourism revenues using Artificial Neural Networks (ANNs) are limited and this paper aims to fill this gap. Based on the gap seen in the literature, the purpose of this study is to develop the optimal forecasting model that yields the highest accuracy when compared the forecast performances of three different methods namely Exponential Smoothing, Box-Jenkins and ANNs for forecasting Turkey’s tourism revenues. Forecasting performances of the models were measured by MAPE statistics. As a result of the analyses performed, it was found that ANN Model with [4:5:1] architecture was the best one among the all models applied in this study.

Keywords

References

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Details

Primary Language

English

Subjects

Tourism (Other)

Journal Section

Research Article

Publication Date

December 25, 2020

Submission Date

July 7, 2020

Acceptance Date

October 14, 2020

Published in Issue

Year 2020 Volume: 8 Number: 2

APA
Çuhadar, M. (2020). A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey. Advances in Hospitality and Tourism Research (AHTR), 8(2), 235-255. https://doi.org/10.30519/ahtr.765394
AMA
1.Çuhadar M. A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey. Advances in Hospitality and Tourism Research (AHTR). 2020;8(2):235-255. doi:10.30519/ahtr.765394
Chicago
Çuhadar, Murat. 2020. “A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey”. Advances in Hospitality and Tourism Research (AHTR) 8 (2): 235-55. https://doi.org/10.30519/ahtr.765394.
EndNote
Çuhadar M (December 1, 2020) A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey. Advances in Hospitality and Tourism Research (AHTR) 8 2 235–255.
IEEE
[1]M. Çuhadar, “A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey”, Advances in Hospitality and Tourism Research (AHTR), vol. 8, no. 2, pp. 235–255, Dec. 2020, doi: 10.30519/ahtr.765394.
ISNAD
Çuhadar, Murat. “A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey”. Advances in Hospitality and Tourism Research (AHTR) 8/2 (December 1, 2020): 235-255. https://doi.org/10.30519/ahtr.765394.
JAMA
1.Çuhadar M. A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey. Advances in Hospitality and Tourism Research (AHTR). 2020;8:235–255.
MLA
Çuhadar, Murat. “A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey”. Advances in Hospitality and Tourism Research (AHTR), vol. 8, no. 2, Dec. 2020, pp. 235-5, doi:10.30519/ahtr.765394.
Vancouver
1.Murat Çuhadar. A Comparative Study on Modelling and Forecasting Tourism Revenues: The Case of Turkey. Advances in Hospitality and Tourism Research (AHTR). 2020 Dec. 1;8(2):235-5. doi:10.30519/ahtr.765394

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