Forecasting in hierarchical environments

R. Lorenz, Lars Dannecker, Philipp J. Rösch, Wolfgang Lehner, Gregor Hackenbroich, B. Schlegel
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引用次数: 3

Abstract

Forecasting is an important data analysis technique and serves as the basis for business planning in many application areas such as energy, sales and traffic management. The currently employed statistical models already provide very accurate predictions, but the forecasting calculation process is very time consuming. This is especially true since many application domains deal with hierarchically organized data. Forecasting in these environments is especially challenging due to ensuring forecasting consistency between hierarchy levels, which leads to an increased data processing and communication effort. For this purpose, we introduce our novel hierarchical forecasting approach, where we propose to push forecast models to the entities on the lowest hierarch level and reuse these models to efficiently create forecast models on higher hierarchical levels. With that we avoid the time-consuming parameter estimation process and allow an almost instant calculation of forecasts.
分层环境下的预测
预测是一种重要的数据分析技术,在能源、销售和交通管理等许多应用领域都是商业规划的基础。目前使用的统计模型已经提供了非常准确的预测,但预测计算过程非常耗时。这一点尤其正确,因为许多应用程序域处理分层组织的数据。在这些环境中进行预测尤其具有挑战性,因为要确保在层次结构级别之间进行预测的一致性,这将导致数据处理和通信工作的增加。为此,我们提出了一种新的分层预测方法,我们提出将预测模型推送到最低层次层次的实体,并重用这些模型来有效地创建更高层次层次的预测模型。这样我们就避免了耗时的参数估计过程,并允许几乎即时的预测计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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