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Robust Prediction of Traffic Flow Based on Multi-Task Graph Convolution Network

机译:基于多任务图卷积网络的交通流量的鲁棒预测

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Accurate traffic prediction is indispensable to realize an intelligent transportation system in a smart city. However, the traffic network has a complex spatial structure, and short-term / long-term time dependence. Besides, the traffic network is faced with the various external factors, including the instability of hardware equipment in data collection and network time delay in the process of data transmission. And most of the existing methods predict the traffic flow under the traffic data is complete, which lose the tolerance in the case of abnormal data. In this paper, to improve the robustness of the traffic flow prediction model, we propose a multi-task graph convolution network (MTGCN) structure, which combines multi-task learning (MTL) with graph convolution network (GCN). Firstly, the GCN method is used to obtain the spatiotemporal correlation of traffic network. Secondly, we use a model that is able to do MTL via multiple outputs, each corresponding to the same traffic network at different adjacent time durations. Experiments on real traffic flow data sets demonstrate the effectiveness and robustness of the proposed method in the presence of abnormal patterns such as Gaussian noise and random missing.
机译:准确的流量预测是在智能城市实现智能运输系统是必不可少的。然而,交通网络具有复杂的空间结构,以及短期/长期时间依赖性。此外,交通网络面临各种外部因素,包括数据收集中硬件设备的不稳定性和数据传输过程中的数据收集和网络时间延迟。而且大多数现有方法都预测了交通数据下的业务流程完成,这在异常数据的情况下丢失了容差。在本文中,为了提高交通流量预测模型的稳健性,我们提出了一种多任务图卷积网络(MTGCN)结构,它将多任务学习(MTL)与图卷积网络(GCN)相结合。首先,GCN方法用于获得交通网络的时空相关性。其次,我们使用能够通过多个输出进行MTL的模型,每个输出对应于不同相邻时间持续时间的相同的业务网络。实际交通流量数据集的实验证明了所提出的方法在存在异常模式中的诸如高斯噪声和随机缺失的情况下的有效性和鲁棒性。

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