Modelling and Forecasting Inbound Tourism Demand to Croatia using Artificial Neural Networks: A Comparative Study

被引:7
作者
Cuhadar, Murat [1 ]
机构
[1] Suleyman Demirel Univ, Fac Econ & Adm Sci, Tourism Management Dept, Isparta, Turkey
来源
JOURNAL OF TOURISM AND SERVICES | 2020年 / 11卷 / 21期
关键词
Modelling; Forecasting; Tourism Demand; ANN's;
D O I
10.29036/jots.v11i21.171
中图分类号
F [经济];
学科分类号
02 ;
摘要
Tourism demand is the basis on which all commercial decisions concerning tourism ultimately depend. Accurate estimation of tourism demand is essential for the tourism industry because it can help reduce risk and uncertainty as well as effectively provide basic information for better tourism planning. The purpose of this study is to develop the optimal forecasting model that yields the highest accuracy when compared to the forecast performances of three different methods, namely Artificial Neural Network (ANN), Exponential Smoothing, and Box-Jenkins methods for forecasting monthly inbound tourist flows to Croatia. Prior studies have been applied to forecast tourism demand to Croatia based on time series models and casual methods. However, the monthly and comparative tourism demand forecasting studies using ANNs are still limited, and this paper aims to fill this gap. The number of monthly foreign tourist arrivals to Croatia covers the period between January 2005-December 2019 data were used to build optimal forecasting models. Forecasting performances of the models were measured by Mean Absolute Percentage Error (MAPE) statistics. As a result of the experiments carried out, when compared to the forecasting performances of various models, 12 lagged ANN models, which have [4-3-1] architecture, were seen to perform best among all models applied in this study. Considering both the empirical findings obtained from this study and previous studies on tourism forecasting, it can be seen that ANN models that do not have any negativities (such as over-training, faulty architecture, etc.) produce successful forecasting results when compared with results generated by conventional statistical methods.
引用
收藏
页码:55 / 70
页数:16
相关论文
共 50 条
  • [31] Forecasting groundwater level using artificial neural networks
    Sreekanth, P. D.
    Geethanjali, N.
    Sreedevi, P. D.
    Ahmed, Shakeel
    Kumar, N. Ravi
    Jayanthi, P. D. Kamala
    CURRENT SCIENCE, 2009, 96 (07): : 933 - 939
  • [32] Forecasting of ozone pollution using artificial neural networks
    Ettouney, Reem S.
    Mjalli, Farouq S.
    Zaki, John G.
    El-Rifai, Mahmoud A.
    Ettouney, Hisham M.
    MANAGEMENT OF ENVIRONMENTAL QUALITY, 2009, 20 (06) : 668 - 683
  • [33] Forecasting tanker market using artificial neural networks
    Lyridis D.V.
    Zacharioudakis P.
    Mitrou P.
    Mylonas A.
    Maritime Economics & Logistics, 2004, 6 (2) : 93 - 108
  • [34] Forecasting Monsoon Precipitation Using Artificial Neural Networks
    曹鸿兴
    魏凤英
    Advances in Atmospheric Sciences, 2001, (05) : 950 - 958
  • [35] Tourism demand modelling and forecasting: a Horizon 2050 paper
    Song, Haiyan
    Zhang, Hanyuan
    TOURISM REVIEW, 2025, 80 (01) : 8 - 27
  • [36] Tourism demand forecasting using short video information
    Hu, Mingming
    Dong, Na
    Hu, Fang
    ANNALS OF TOURISM RESEARCH, 2024, 109
  • [37] Tourism Demand Forecasting Using Nonadditive Forecast Combinations
    Hu, Yi-Chung
    Wu, Geng
    Jiang, Peng
    JOURNAL OF HOSPITALITY & TOURISM RESEARCH, 2023, 47 (05) : 775 - 799
  • [38] Tourism demand forecasting using novel hybrid system
    Pai, Ping-Feng
    Hung, Kuo-Chen
    Lin, Kuo-Ping
    EXPERT SYSTEMS WITH APPLICATIONS, 2014, 41 (08) : 3691 - 3702
  • [39] Comparison of Forecasting Models using Multiple Regression and Artificial Neural Networks for the Supply and Demand of Thai Ethanol
    Homchalee, R.
    Sessomboon, W.
    2013 IEEE INTERNATIONAL CONFERENCE ON INDUSTRIAL ENGINEERING AND ENGINEERING MANAGEMENT (IEEM 2013), 2013, : 963 - 967
  • [40] Modelling formulations using gene expression programming - A comparative analysis with artificial neural networks
    Colbourn, E. A.
    Roskilly, S. J.
    Rowe, R. C.
    York, P.
    EUROPEAN JOURNAL OF PHARMACEUTICAL SCIENCES, 2011, 44 (03) : 366 - 374