Time series forecasting is a growing domain with diverse applications. However, changes of the system behavior over time due to internal or external influences are challenging. Therefore, predictions of a previously learned fore-casting model might not be useful anymore. In this paper, we present EVent-triggered Augmented Refitting of Gaussian Process Regression for Seasonal Data (EVARS-GPR), a novel online algorithm that is able to handle sudden shifts in the target variable scale of seasonal data. For this purpose, EVARS-GPR com-bines online change point detection with a refitting of the prediction model using data augmentation for samples prior to a change point. Our experiments on sim-ulated data show that EVARS-GPR is applicable for a wide range of output scale changes. EVARS-GPR has on average a 20.8 % lower RMSE on different real-world datasets compared to methods with a similar computational resource con-sumption. Furthermore, we show that our algorithm leads to a six-fold reduction of the averaged runtime in relation to all comparison partners with a periodical refitting strategy. In summary, we present a computationally efficient online fore-casting algorithm for seasonal time series with changes of the target variable scale and demonstrate its functionality on simulated as well as real-world data. All code is publicly available on GitHub: https://github.com/grimmlab/evars-gpr.
翻译:时间序列预测是一个不断增长的领域,其应用范围各异。然而,由于内部或外部影响,系统行为随时间变化的变化具有挑战性。因此,对以前学过的前前前前前前前前前前前前前前前前前前前卫模型的预测可能不再有用。在本文中,我们展示了“EVenent-Troged Exproduced Exferive Reformation of Gaussian Concredition for Syansal Data (EVARS-GPR) 的EVARS-GPR,这是一个新颖的在线算法,能够处理季节性数据目标可变规模的突然变化。为此,EVARS-GPR combine 在线变换点检测与在变换点之前使用数据放大模型对预测模型进行重新配置。我们在模拟数据的实验中显示,EVARS-GPR-GPR适用于广泛的产出规模变化。EVARS-GPR在不同的现实世界数据集中平均20.8%的RME RMSE, 与类似的计算方法。我们算算法导致所有时间平均比重比重比重与所有可变的Gialalalalalalalalalalalalalalalalalalalalalalalalalalalalalalal 。