Joint Bottom-Up Method for Forecasting Grouped Time Series: Application to Australian Domestic Tourism

N. Bertani, Ville A. Satopää, Shane T. Jensen
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引用次数: 3

Abstract

Many applications involve a hierarchy of time-series, where values at the bottom level aggregate to values at higher levels. Forecasts of such hierarchical data need to be accurate, probabilistic, and coherent in the sense of respecting hierarchical aggregation. While recent developments have explicitly modeled every time-series in the hierarchy, we show, under general conditions, that hierarchical data can be modeled jointly by considering only its bottom-level series and their contemporaneous covariance. Inspired by this result, we devise a Bayesian method that models bottom-level series jointly, takes into account their contemporaneous covariance, and performs automatic selection of lag terms, both within and across series. The model copes with high-dimensional data, and outputs both point and probabilistic forecasts. Additionally, it returns posterior distributions of all parameters, which can be used for inference. As a case study, we apply our method to make recommendations on planning and promotion of domestic tourism in Australia. Our model reveals the hidden spatio-temporal dynamics of different types of domestic tourism in Australia, and allows us to explore how promotional investments could be localized to develop tourism in accordance with the declared desiderata of the Australian government.
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联合自下而上的分组时间序列预测方法:在澳大利亚国内旅游中的应用
许多应用程序涉及时间序列的层次结构,其中底层的值聚合到更高级别的值。这种分层数据的预测需要在尊重分层聚合的意义上是准确的、概率的和连贯的。虽然最近的发展已经明确地对层次结构中的每个时间序列进行了建模,但我们表明,在一般情况下,可以通过仅考虑其底层序列及其同期协方差来联合建模层次数据。受此结果的启发,我们设计了一种贝叶斯方法,该方法联合底层序列建模,考虑它们的同期协方差,并在序列内和序列间自动选择滞后项。该模型处理高维数据,并输出点和概率预测。此外,它返回所有参数的后验分布,可用于推理。作为一个案例研究,我们运用我们的方法对澳大利亚国内旅游的规划和推广提出建议。我们的模型揭示了澳大利亚不同类型国内旅游的隐藏时空动态,并允许我们探索如何根据澳大利亚政府宣布的愿望本地化促销投资以发展旅游业。
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