The ability to forecast far into the future is highly beneficial to many applications, including but not limited to climatology, energy consumption, and logistics. However, due to noise or measurement error, it is questionable how far into the future one can reasonably predict. In this paper, we first mathematically show that due to error accumulation, sophisticated models might not outperform baseline models for long-term forecasting. To demonstrate, we show that a non-parametric baseline model based on periodicity can actually achieve comparable performance to a state-of-the-art Transformer-based model on various datasets. We further propose FreDo, a frequency domain-based neural network model that is built on top of the baseline model to enhance its performance and which greatly outperforms the state-of-the-art model. Finally, we validate that the frequency domain is indeed better by comparing univariate models trained in the frequency v.s. time domain.
翻译:预测远到未来的能力对于许多应用非常有益,包括但不限于气候学、能源消耗和物流。然而,由于噪音或测量错误,未来可以合理预测的距离令人怀疑。在本文中,我们首先从数学上表明,由于错误积累,先进的模型可能不会超过长期预测的基准模型。要证明,基于周期的不参数基线模型实际上能够实现与基于各种数据集的最新变异器模型的可比较性能。我们进一步提议FreDo,一个基于频率的域网模型,建在基线模型的顶端,以提高其性能,大大优于最新模型。最后,我们确认,将频率与时间域进行比较,使频率域确实更好。