论文标题

强大的概率时间序列预测

Robust Probabilistic Time Series Forecasting

论文作者

Yoon, TaeHo, Park, Youngsuk, Ryu, Ernest K., Wang, Yuyang

论文摘要

概率时间序列的预测由于其量化不确定性的能力,在决策过程中起着至关重要的作用。但是,深层预测模型可能容易受到输入扰动,并且这种扰动的概念以及鲁棒性的概念在概率预测的制度中甚至还没有完全确定。在这项工作中,我们为强有力的概率时间序列预测提供了一个框架。首先,我们概括了对抗性输入扰动的概念,我们根据界限瓦斯汀(Wasserstein)的偏差来制定鲁棒性的概念。然后,我们扩展了随机平滑技术,以通过理论鲁棒性证书来实现对某些类别的对抗扰动的鲁滨预测者。最后,广泛的实验表明,我们的方法在经验上可以有效地提高在噪声观察中补充的添加剂对抗攻击和预测一致性下的预测质量。

Probabilistic time series forecasting has played critical role in decision-making processes due to its capability to quantify uncertainties. Deep forecasting models, however, could be prone to input perturbations, and the notion of such perturbations, together with that of robustness, has not even been completely established in the regime of probabilistic forecasting. In this work, we propose a framework for robust probabilistic time series forecasting. First, we generalize the concept of adversarial input perturbations, based on which we formulate the concept of robustness in terms of bounded Wasserstein deviation. Then we extend the randomized smoothing technique to attain robust probabilistic forecasters with theoretical robustness certificates against certain classes of adversarial perturbations. Lastly, extensive experiments demonstrate that our methods are empirically effective in enhancing the forecast quality under additive adversarial attacks and forecast consistency under supplement of noisy observations.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源