Time series models often deal with extreme events and anomalies, both prevalent in real-world datasets. Such models often need to provide careful probabilistic forecasting, which is vital in risk management for extreme events such as hurricanes and pandemics. However, it is challenging to automatically detect and learn to use extreme events and anomalies for large-scale datasets, which often require manual effort. Hence, we propose an anomaly-aware forecast framework that leverages the previously seen effects of anomalies to improve its prediction accuracy during and after the presence of extreme events. Specifically, the framework automatically extracts anomalies and incorporates them through an attention mechanism to increase its accuracy for future extreme events. Moreover, the framework employs a dynamic uncertainty optimization algorithm that reduces the uncertainty of forecasts in an online manner. The proposed framework demonstrated consistent superior accuracy with less uncertainty on three datasets with different varieties of anomalies over the current prediction models.
翻译:时间序列模型往往涉及极端事件和异常现象,两者都存在于现实世界的数据集中,这类模型往往需要提供谨慎的概率预测,这对于飓风和大流行病等极端事件的风险管理至关重要,然而,要自动发现和学会使用极端事件和异常现象用于大规模数据集,往往需要人工操作,则具有挑战性;因此,我们提议了一个异常现象预测框架,利用以往所见异常现象的影响,在极端事件发生期间和发生之后提高预测的准确性。具体地说,该框架自动提取异常现象,并通过关注机制将其纳入其中,以提高未来极端事件的准确性。此外,该框架采用动态的不确定性优化算法,以在线方式减少预测的不确定性。拟议框架显示,与当前预测模型不同类型异常的三套数据集的准确性较高,但不确定性较小。