Forecast combination has been widely applied in the last few decades to improve forecast accuracy. In recent years, the idea of using time series features to construct forecast combination model has flourished in the forecasting area. Although this idea has been proved to be beneficial in several forecast competitions such as the M3 and M4 competitions, it may not be practical in many situations. For example, the task of selecting appropriate features to build forecasting models can be a big challenge for many researchers. Even if there is one acceptable way to define the features, existing features are estimated based on the historical patterns, which are doomed to change in the future, or infeasible in the case of limited historical data. In this work, we suggest a change of focus from the historical data to the produced forecasts to extract features. We calculate the diversity of a pool of models based on the corresponding forecasts as a decisive feature and use meta-learning to construct diversity-based forecast combination models. A rich set of time series are used to evaluate the performance of the proposed method. Experimental results show that our diversity-based forecast combination framework not only simplifies the modelling process but also achieves superior forecasting performance.
翻译:在过去几十年里,为了提高预测的准确性,广泛应用了预测的组合。近年来,在预测领域,利用时间序列特征构建预测组合模型的想法已经发扬光大。虽然这一想法在诸如M3和M4竞赛等若干预测竞赛中被证明是有益的,但在许多情况下可能并不实际。例如,选择适当特征以构建预测模型的任务对许多研究人员来说可能是一个巨大的挑战。即使有一个可接受的方法来界定这些特征,但根据历史模式对现有特征进行了估计,这些模式注定会在未来发生变化,或者在有限的历史数据情况下是行不通的。在这项工作中,我们建议把重点从历史数据转向生成的预测以提取特征。我们根据相应的预测作为决定性特征计算出一组模型的多样性,并利用元化学习来构建基于多样性的预测组合模型。使用一套丰富的时间序列来评估拟议方法的性能。实验结果显示,我们基于多样性的预测组合框架不仅简化了模拟过程,而且还实现了更高的预测性能。