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首页> 外文期刊>Journal of travel research >Forecasting Seasonal Tourism Demand Using a Multiseries Structural Time Series Method
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Forecasting Seasonal Tourism Demand Using a Multiseries Structural Time Series Method

机译:使用多序列结构时间序列方法预测季节性旅游需求

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摘要

Multivariate forecasting methods are intuitively appealing since they are able to capture the interseries dependencies, and therefore may forecast more accurately. This study proposes a multiseries structural time series method based on a novel data restacking technique as an alternative approach to seasonal tourism demand forecasting. The proposed approach is analogous to the multivariate method but only requires one variable. In this study, a quarterly tourism demand series is split into four component series, each component representing the demand in a particular quarter of each year; the component series are then restacked to build a multiseries structural time series model. Empirical evidence from Hong Kong inbound tourism demand forecasting shows that the newly proposed approach improves the forecast accuracy, compared with traditional univariate models.
机译:多元预测方法直观上吸引人,因为它们能够捕获序列间的依存关系,因此可以进行更准确的预测。这项研究提出了一种基于新颖的数据重组技术的多序列结构时间序列方法,作为季节性旅游需求预测的替代方法。所提出的方法类似于多元方法,但是仅需要一个变量。在这项研究中,一个季度的旅游需求系列被分为四个部分,每个部分代表每年特定季度的需求。然后重新组合组件系列以构建多系列结构时间系列模型。来自香港入境旅游需求预测的经验证据表明,与传统的单变量模型相比,新提出的方法提高了预测准确性。

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