Forecasting tourism demand using consumer expectations

被引:20
|
作者
Claveria, Oscar [1 ]
Datzira, Jordi [2 ]
机构
[1] Univ Barcelona, Res Inst Appl Econ IREA, Dept Econometr Stat & Spanish Econ, Barcelona, Spain
[2] Datzira Dev Serv, Barcelona, Spain
关键词
Tourism; Forecasting; Consumers; Spain; Demand management;
D O I
10.1108/16605371011040889
中图分类号
F [经济];
学科分类号
02 ;
摘要
Purpose - There is a lack of studies on tourism demand forecasting that use non-linear models. The aim of this paper is to introduce consumer expectations in time-series models in order to analyse their usefulness to forecast tourism demand. Design/methodology/approach - The paper focuses on forecasting tourism demand in Catalonia for the four main visitor markets (France, the UK, Germany and Italy) combining qualitative information with quantitative models: autoregressive (AR), autoregressive integrated moving average (ARIMA), self-exciting threshold autoregressions (SETAR) and Markov switching regime (MKTAR) models. The forecasting performance of the different models is evaluated for different time horizons (one, two, three, six and 12 months). Findings - Although some differences are found between the results obtained for the different countries, when comparing the forecasting accuracy of the different techniques, ARIMA and Markov switching regime models outperform the rest of the models. In all cases, forecasts of arrivals show lower root mean square errors (RMSE) than forecasts of overnight stays. It is found that models with consumer expectations do not outperform benchmark models. These results are extensive to all time horizons analysed. Research limitations/implications - This study encourages the use of qualitative information and more advanced econometric techniques in order to improve tourism demand forecasting. Originality/value - This is the first study on tourism demand focusing specifically on Catalonia. To date, there have been no studies on tourism demand forecasting that use non-linear models such as self-exciting threshold autoregressions (SETAR) and Markov switching regime (MKTAR) models. This paper fills this gap and analyses forecasting performance at a regional level.
引用
收藏
页码:18 / 36
页数:19
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