改进GM(1,1)模型在季节性月旅游需求预测中的应用

A. Shabri, R. Samsudin
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引用次数: 0

摘要

大多数旅游需求时间序列呈现季节性、周期性和趋势成分的模式,导致中长期数据预测精度较低。为了解决这一问题,提出了一种基于重构时间序列和遗传优化方法的改进灰色模型(IGM)。利用2004年1月至2016年12月马来西亚兰卡威岛的月游客人数来验证优化模型在预测旅游需求方面的效率。结果表明,该模型对具有增长趋势、季节性和周期性特征的数据具有较好的预测精度。
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Application of Improved GM(1,1) Models in Seasonal Monthly Tourism Demand Forecast
The majority of tourism demand time series show patterns in terms of seasonal, cyclical and trend components, leading to low accuracy in medium and long-term data forecasting. In order to solve this problem, this paper presents an improved grey model (IGM) based on a re-shaped time series and a genetically optimized method. The monthly arrivals of tourists to Langkawi Island in Malaysia between January 2004 and December 2016 were used to verify the efficiency of the optimized model in anticipating the demand for tourism. The results show that the proposed model achieves better forecasting accuracy on the data with increasing trend, seasonal and cyclical patterns.
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