Air quality prediction is a typical spatio-temporal modeling problem, which always uses different components to handle spatial and temporal dependencies in complex systems separately. Previous models based on time series analysis and Recurrent Neural Network (RNN) methods have only modeled time series while ignoring spatial information. Previous GCNs-based methods usually require providing spatial correlation graph structure of observation sites in advance. The correlations among these sites and their strengths are usually calculated using prior information. However, due to the limitations of human cognition, limited prior information cannot reflect the real station-related structure or bring more effective information for accurate prediction. To this end, we propose a novel Dynamic Graph Neural Network with Adaptive Edge Attributes (DGN-AEA) on the message passing network, which generates the adaptive bidirected dynamic graph by learning the edge attributes as model parameters. Unlike prior information to establish edges, our method can obtain adaptive edge information through end-to-end training without any prior information. Thus reduced the complexity of the problem. Besides, the hidden structural information between the stations can be obtained as model by-products, which can help make some subsequent decision-making analyses. Experimental results show that our model received state-of-the-art performance than other baselines.
翻译:空气质量预测是一个典型的时空空间模型问题,它总是使用不同组成部分分别处理复杂系统中的空间和时间依赖性。以前基于时间序列分析和经常神经网络(神经网络)方法的模型只是模拟时间序列,而忽略了空间信息。以前基于GCN的方法通常要求事先提供观测地点的空间相关图形结构。这些地点及其优势的关联性通常使用先前的信息来计算。然而,由于人类认知的局限性,有限的先前信息无法反映实际与站相关的结构,也无法为准确的预测带来更有效的信息。为此,我们提议在信息传输网络上建立一个具有适应性边缘属性的新动态动态神经系统网络(DGN-AEA),通过学习边缘属性作为模型参数来生成适应性双向动态图形。与先前的信息不同,我们的方法可以在没有任何事先信息的情况下通过端对端培训获得适应性边缘信息。因此降低了问题的复杂性。此外,各台站之间的隐藏的结构信息可以作为模型产品获取,这可以帮助我们随后的实验结果显示其他的基线分析结果。