We enhance the accuracy and generalization of univariate time series point prediction by an explainable ensemble on the fly. We propose an Interpretable Dynamic Ensemble Architecture (IDEA), in which interpretable base learners give predictions independently with sparse communication as a group. The model is composed of several sequentially stacked groups connected by group backcast residuals and recurrent input competition. Ensemble driven by end-to-end training both horizontally and vertically brings state-of-the-art (SOTA) performances. Forecast accuracy improves by 2.6% over the best statistical benchmark on the TOURISM dataset and 2% over the best deep learning benchmark on the M4 dataset. The architecture enjoys several advantages, being applicable to time series from various domains, explainable to users with specialized modular structure and robust to changes in task distribution.
翻译:我们通过一个可解释的组合组合来提高单象时间序列点预测的准确性和概括性。 我们提议了一个可解释的动态组合结构(IDEA),其中可解释的基础学习者独立地作出预测,而作为一个群体,通信很少。模型由几个依次叠叠的小组组成,这些小组由群体背弃残余和经常性输入竞争联系在一起。由端对端培训驱动的组合,横向和纵向都带来最先进的性能。预测准确性比TOURISM数据集的最佳统计基准提高2.6%,比M4数据集的最佳深层学习基准提高2%。该结构有若干优点,适用于不同领域的时间序列,可以向具有专门模块结构的用户解释,并且对任务分布的变化具有很强性能。