International tourist arrivals modelling and forecasting: A case of Zimbabwe

Tendai Makoni , Gideon Mazuruse , Brighton Nyagadza
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引用次数: 9

Abstract

Zimbabwe is blessed with tourist attractions that draw visitors from all over the world. However, there are no quantitative models available for tourism stakeholders to utilize in decision-making and planning. The country is experiencing foreign currency shortages, which may be alleviated if the tourism industry, which has the power to generate foreign currency, adopted quantitative forecasting techniques that can provide reliable estimates. For planning reasons, resource mobilization, and allocation, accurate tourist projections are critical to the government and other tourism stakeholders. The goal of this research is to model international tourist arrivals in Zimbabwe and develop a quantitative statistical model that can be used to forecast future international tourist visitors. The Zimbabwe National Statistics Agency (ZIMSTAT) provided monthly foreign tourist arrivals data for the period January 2000 to December 2018. After the data revealed non-stationarity and seasonality, a time series technique in the form of the Box-Jenkins approach is applied to the data. The autocorrelation function (ACF), partial autocorrelation function (PACF), and root mean square error (RMSE) revealed that a seasonal autoregressive integrated moving average (SARIMA) model suited well to the data. The model predicted a gradual and seasonal increase in international tourist arrivals. The results of this model could be used by those in charge of tourism marketing to develop effective and efficient marketing strategies so that the country can receive a significant increase in international tourists, which will bring in much-needed foreign currency. It is important for tourism stakeholders and service providers to guarantee the availability of enough transport and accommodation facilities, especially during peak seasons.

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国际游客人数建模与预测:以津巴布韦为例
津巴布韦拥有吸引世界各地游客的旅游景点。然而,没有可供旅游业利益相关者在决策和规划中使用的定量模型。该国正经历外汇短缺,如果有能力产生外汇的旅游业采用能够提供可靠估计的定量预测技术,这种情况可能会得到缓解。出于规划、资源调动和分配的原因,准确的旅游预测对政府和其他旅游业利益相关者至关重要。这项研究的目标是对津巴布韦的国际游客人数进行建模,并开发一个可用于预测未来国际游客的定量统计模型。津巴布韦国家统计局(ZIMSTAT)提供了2000年1月至2018年12月期间的月度外国游客入境数据。在数据显示出非平稳性和季节性之后,将Box-Jenkins方法形式的时间序列技术应用于数据。自相关函数(ACF)、偏自相关函数和均方根误差(RMSE)表明,季节自回归积分移动平均(SARIMA)模型非常适合数据。该模型预测,国际游客人数将逐渐呈季节性增长。旅游营销负责人可以利用这一模式的结果制定有效的营销战略,使该国能够接待大量国际游客,从而带来急需的外汇。旅游业利益相关者和服务提供商必须保证提供足够的交通和住宿设施,尤其是在旺季。
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