Efficient forecasting for hierarchical time series

Lars Dannecker, R. Lorenz, Philipp J. Rösch, Wolfgang Lehner, Gregor Hackenbroich
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引用次数: 4

Abstract

Forecasting is used as the basis for business planning in many application areas such as energy, sales and traffic management. Time series data used in these areas is often hierarchically organized and thus, aggregated along the hierarchy levels based on their dimensional features. Calculating forecasts in these environments is very time consuming, due to ensuring forecasting consistency between hierarchy levels. To increase the forecasting efficiency for hierarchically organized time series, we introduce a novel forecasting approach that takes advantage of the hierarchical organization. There, we reuse the forecast models maintained on the lowest level of the hierarchy to almost instantly create already estimated forecast models on higher hierarchical levels. In addition, we define a hierarchical communication framework, increasing the communication flexibility and efficiency. Our experiments show significant runtime improvements for creating a forecast model at higher hierarchical levels, while still providing a very high accuracy.
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分层时间序列的有效预测
在能源、销售和交通管理等许多应用领域,预测被用作商业规划的基础。在这些领域中使用的时间序列数据通常是分层组织的,因此,根据它们的维度特征沿着分层级别聚合。在这些环境中计算预测是非常耗时的,因为要确保层次结构级别之间的预测一致性。为了提高分层时间序列的预测效率,提出了一种利用分层组织的预测方法。在那里,我们重用在层次结构的最低级别上维护的预测模型,几乎立即在更高的层次结构级别上创建已经估计的预测模型。此外,我们还定义了一个分层的通信框架,提高了通信的灵活性和效率。我们的实验显示了在更高层次上创建预测模型的显著运行时改进,同时仍然提供非常高的准确性。
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