Long sequence time-series forecasting (LSTF) has become increasingly popular for its wide range of applications. Though superior models have been proposed to enhance the prediction effectiveness and efficiency, it is reckless to ignore or underestimate one of the most natural and basic temporal properties of time-series, the historical inertia (HI), which refers to the most recent data-points in the input time series. In this paper, we experimentally evaluate the power of historical inertia on four public real-word datasets. The results demonstrate that up to 82% relative improvement over state-of-the-art works can be achieved even by adopting HI directly as output.
翻译:长序时间序列预测(LSTF)因其广泛的应用范围而越来越受欢迎。虽然提出了提高预测效力和效率的优等模型,但忽视或低估时间序列最自然和最基本的时间特性之一,即历史惯性(HI),这是指输入时间序列中的最新数据点。在本文中,我们实验性地评估了四个公开真实字词数据集的历史惯性的力量。结果显示,即使直接采用HI作为产出,也能够实现相对于最新工程的82%的相对改进。