无生成城市流量估算

Senzhang Wang, Jiyue Li, Hao Miao, Junbo Zhang, Junxing Zhu, Jianxin Wang
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引用次数: 4

摘要

城市流量估算(Urban flow imputation)旨在根据周边地区的可用流量推断出某些地点的缺失流量,这对于城市规划和公共安全等各种与智慧城市相关的应用至关重要。虽然提出了许多方法来估算时间序列数据,但由于以下原因,它们可能无法直接应用于城市流量数据。首先,城市流量具有复杂的时空相关性,与时间序列数据相比,难以捕捉。其次,城市流量数据可以是随机缺失(即在时间和地点上随机缺失),也可以是块缺失(即在特定时间段内所有地点都缺失)。因此,现有的方法很难在这两种情况下都很好地工作。本文首次研究了城市流插值问题,并提出了一种基于无生成注意力的时空组合和混合完成网络模型(AST-CMCN)来有效解决该问题。具体来说,AST-CMCN由一个时空补全网络(SATCNet)和一个时空混合补全网络(STMCNet)组成。SATCNet由堆叠的GRUAtt模块组成,分别捕获城市流量的地理和时间相关性。STMCNet旨在捕获历史城市流量和当前数据之间复杂的时空关联。还提出了一个消息传递模块,用于捕获从未出现在历史数据中的新时空模式。与最先进的基线相比,在两个大型真实数据集上进行的大量实验验证了我们方法的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative-Free Urban Flow Imputation
Urban flow imputation, which aims to infer the missing flows of some locations based on the available flows of surrounding areas, is critically important to various smart city related applications such as urban planning and public safety. Although many methods are proposed to impute time series data, they may not be feasible to be directly applied on urban flow data due to the following reasons. First, urban flows have the complex spatial and temporal correlations which are much harder to be captured compared with time series data. Second, the urban flow data can be random missing (i.e., missing randomly in terms of times and locations) or block missing (i.e., missing for all locations in a particular time slot). Thus it is difficult for existing methods to work well on both scenarios. In this paper, we for the first time study the urban flow imputation problem and propose a generative-free Attention-based Spatial-Temporal Combine and Mix Completion Network model (AST-CMCN for short) to effectively address it. Specifically, AST-CMCN consists of a Spatial and Temporal Completion Network (SATCNet for short) and a Spatial-Temporal Mix Completion Network (STMCNet for short). SATCNet is composed of stacked GRUAtt modules to capture the geographical and temporal correlations of the urban flows, separately. STMCNet is designed to capture the complex spatial-temporal associations jointly between historical urban flows and current data. A Message Passing module is also proposed to capture new spatial-temporal patterns that never appear in the historical data. Extensive experiments on two large real-world datasets validate the effectiveness and efficiency of our method compared with the state-of-the-art baselines.
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