In many data-driven applications, collecting data from different sources is increasingly desirable for enhancing performance. In this paper, we are interested in the problem of probabilistic forecasting with multi-source time series. We propose a neural mixture structure-based probability model for learning different predictive relations and their adaptive combinations from multi-source time series. We present the prediction and uncertainty quantification methods that apply to different distributions of target variables. Additionally, given the imbalanced and unstable behaviors observed during the direct training of the proposed mixture model, we develop a phased learning method and provide a theoretical analysis. In experimental evaluations, the mixture model trained by the phased learning exhibits competitive performance on both point and probabilistic prediction metrics. Meanwhile, the proposed uncertainty conditioned error suggests the potential of the mixture model's uncertainty score as a reliability indicator of predictions.
翻译:在许多数据驱动的应用中,从不同来源收集数据对于提高绩效越来越可取。在本文中,我们对多源时间序列的概率预测问题感兴趣。我们提出了一个基于神经混合结构的概率模型,用于学习不同预测关系及其从多源时间序列的适应性组合。我们介绍了适用于目标变量不同分布的预测和不确定性量化方法。此外,鉴于在直接培训拟议混合模型期间所观察到的不平衡和不稳定行为,我们开发了一个分阶段学习方法并提供理论分析。在实验评估中,通过分阶段学习所培训的混合模型在点数和概率预测指标两方面的竞争性表现。同时,拟议的不确定条件错误表明混合模型的不确定性分数作为预测的可靠性指标具有潜力。