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Multi-step time series prediction intervals using neuroevolution

机译:使用神经形式的多步时间序列预测间隔

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Multi-step time series forecasting (TSF) is a crucial element to support tactical decisions (e.g., designing production or marketing plans several months in advance). While most TSF research addresses only single-point prediction, prediction intervals (PIs) are useful to reduce uncertainty related to important decision making variables. In this paper, we explore a large set of neural network methods for multi-step TSF and that directly optimize PIs. This includes multi-step adaptations of recently proposed PI methods, such as lower-upper bound estimation (LUBET), its ensemble extension (LUBEXT), a multi-objective evolutionary algorithm LUBE (MLUBET) and a two-phase learning multi-objective evolutionary algorithm (M2LUBET). We also explore two new ensemble variants for the evolutionary approaches based on two PI coverage-width split methods (radial slices and clustering), leading to the MLUBEXT, M2LUBEXT, MLUBEXT2 and M2LUBEXT2 methods. A robust comparison was held by considering the rolling window procedure, nine time series from several real-world domains and with different characteristics, two PI quality measures (coverage error and width) and the Wilcoxon statistic. Overall, the best results were achieved by the M2LUBET neuroevolution method, which requires a reasonable computational effort for time series with a few hundreds of observations.
机译:多步时间序列预测(TSF)是支持战术决策的关键因素(例如,提前几个月设计生产或营销计划)。虽然大多数TSF研究仅用于单点预测,但预测间隔(PIS)可用于减少与重要决策变量相关的不确定性。在本文中,我们探讨了多步TSF的大量神经网络方法,直接优化PIS。这包括最近提出的PI方法的多步调整,例如下上限估计(Lubet),其集合延伸(Lubext),多目标进化算法润滑剂(MLubet)和两相学习多目标进化算法(M2Lubet)。我们还探索了基于两个PI覆盖宽度分离方法(径向切片和聚类)的进化方法的两个新的集合变体,从而导致MLUBEXT,M2LUBEXT,MLUBext2和M2Lubext2方法。通过考虑滚动窗口程序,九次时间序列以及来自多个真实世界域的九次序列以及不同特征,两个PI质量措施(覆盖率误差和宽度)和Wilcoxon统计数据来保持鲁棒比较。总的来说,M2Lubet神经剧方法实现了最佳结果,这需要与几百个观察结果进行时间序列的合理计算努力。

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