Causality-Aware Spatiotemporal Graph Neural Networks for Spatiotemporal Time Series Imputation.

Baoyu Jing, Dawei Zhou, Kan Ren, Carl Yang
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Abstract

Spatiotemporal time series are usually collected via monitoring sensors placed at different locations, which usually contain missing values due to various failures, such as mechanical damages and Internet outages. Imputing the missing values is crucial for analyzing time series. When recovering a specific data point, most existing methods consider all the information relevant to that point regardless of the cause-and-effect relationship. During data collection, it is inevitable that some unknown confounders are included, e.g., background noise in time series and non-causal shortcut edges in the constructed sensor network. These confounders could open backdoor paths and establish non-causal correlations between the input and output. Over-exploiting these non-causal correlations could cause overfitting. In this paper, we first revisit spatiotemporal time series imputation from a causal perspective and show how to block the confounders via the frontdoor adjustment. Based on the results of frontdoor adjustment, we introduce a novel Causality-Aware Spatiotemporal Graph Neural Network (Casper), which contains a novel Prompt Based Decoder (PBD) and a Spatiotemporal Causal Attention (SCA). PBD could reduce the impact of confounders and SCA could discover the sparse causal relationships among embeddings. Theoretical analysis reveals that SCA discovers causal relationships based on the values of gradients. We evaluate Casper on three real-world datasets, and the experimental results show that Casper could outperform the baselines and could effectively discover the causal relationships.

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基于因果关系感知的时空图神经网络。
时空时间序列通常是通过放置在不同位置的监测传感器收集的,这些传感器通常由于各种故障(如机械损坏和互联网中断)而包含缺失值。在分析时间序列时,输入缺失值是至关重要的。当恢复一个特定的数据点时,大多数现有的方法考虑与该点相关的所有信息,而不考虑因果关系。在数据采集过程中,不可避免地会包含一些未知的混杂因素,如时间序列中的背景噪声、构建的传感器网络中的非因果捷径边等。这些混杂因素可以打开后门,在输入和输出之间建立非因果关系。过度利用这些非因果相关性可能会导致过度拟合。在本文中,我们首先从因果关系的角度重新审视时空时间序列的imputation,并展示了如何通过前门调整来阻止混杂因素。在前门调整结果的基础上,我们引入了一种新的因果感知时空图神经网络(Casper),它包含了一种新的基于提示的解码器(PBD)和时空因果注意(SCA)。PBD可以减少混杂因素的影响,SCA可以发现嵌入之间的稀疏因果关系。理论分析表明,SCA基于梯度值发现因果关系。我们在三个真实数据集上对Casper进行了评估,实验结果表明Casper可以优于基线,并且可以有效地发现因果关系。
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