Dynamic Pooling for the Combination of Forecasts generated using Multi Level Learning

Silvia Riedel, B. Gabrys
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引用次数: 16

Abstract

In this paper we provide experimental results and extensions to our previous theoretical findings concerning the combination of forecasts that have been diversified by three different methods: with parameters learned at different data aggregation levels, by thick modeling and by the use of different forecasting methods. An approach of error variance based pooling as proposed by Aiolfi and Timmermann has been compared with flat combinations as well as an alternative pooling approach in which we consider information about the used diversification. An advantage of our approach is that it leads to the generation of novel multi step multi level forecast generation structures that carry out the combination in different steps of pooling corresponding to the different types of diversification. We describe different evolutionary approaches in order to evolve the order of pooling of the diversification dimensions. Extensions of such evolutions allow the generation of more flexible multi level multi step combination structures containing better adaptive capabilities. We could prove a significant error reduction comparing results of our generated combination structures with results generated with the algorithm of Aiolfi and Timmermann as well as with flat combination for the application of Revenue Management seasonal forecasting.
多层学习生成的预测组合的动态池化
在本文中,我们提供了实验结果,并扩展了我们之前关于预测组合的理论发现,这些预测组合通过三种不同的方法进行了多样化:在不同的数据聚集水平上学习参数,通过厚建模和使用不同的预测方法。Aiolfi和Timmermann提出的基于误差方差的池化方法与平面组合以及考虑使用多样化信息的替代池化方法进行了比较。我们的方法的一个优点是,它导致了新的多步骤多层次预测生成结构的生成,在池化的不同步骤中进行组合,对应于不同类型的多样化。我们描述了不同的进化方法,以进化多样化维度的池化顺序。这种进化的扩展允许产生更灵活的多级多步组合结构,其中包含更好的自适应能力。我们可以证明,将我们生成的组合结构的结果与使用Aiolfi和Timmermann算法生成的结果以及用于收益管理季节性预测的平面组合的结果进行比较,可以显着降低误差。
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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