论文标题
使用语言环境作为关系电感偏见,通过图形网络进行了几个样本的流量预测
Few-Sample Traffic Prediction with Graph Networks using Locale as Relational Inductive Biases
论文作者
论文摘要
准确的短期流量预测在各种智能移动操作和管理系统中起关键作用。当前,大多数最先进的预测模型基于图形神经网络(GNN),所需的培训样本与交通网络的大小成正比。在许多城市中,由于数据收集费用,可用的流量数据量基本低于最低要求。这仍然是一个开放的问题,可以在大规模网络上开发具有少量培训数据的流量预测模型。我们注意到,在不久的将来,节点的交通状态仅取决于其本地化社区的交通状态,可以使用图形关系归纳偏见来表示。鉴于此,本文开发了一个基于图形网络(GN)的深度学习模型Localegn,该模型使用局部数据汇总和更新功能以及节点复发性神经网络描述流量动态。 Localegn是一种轻巧的模型,旨在在几个不合适的情况下进行训练,因此可以解决几个样本流量预测的问题。研究了提出的模型,以通过六个数据集预测交通速度和流量,实验结果表明,Localegn优于现有的最新基线模型。还证明,来自Localegn的学习知识可以在整个城市转移。研究结果可以帮助开发轻加权的交通预测系统,特别是对于缺乏历史上归档的交通数据的城市。
Accurate short-term traffic prediction plays a pivotal role in various smart mobility operation and management systems. Currently, most of the state-of-the-art prediction models are based on graph neural networks (GNNs), and the required training samples are proportional to the size of the traffic network. In many cities, the available amount of traffic data is substantially below the minimum requirement due to the data collection expense. It is still an open question to develop traffic prediction models with a small size of training data on large-scale networks. We notice that the traffic states of a node for the near future only depend on the traffic states of its localized neighborhoods, which can be represented using the graph relational inductive biases. In view of this, this paper develops a graph network (GN)-based deep learning model LocaleGN that depicts the traffic dynamics using localized data aggregating and updating functions, as well as the node-wise recurrent neural networks. LocaleGN is a light-weighted model designed for training on few samples without over-fitting, and hence it can solve the problem of few-sample traffic prediction. The proposed model is examined on predicting both traffic speed and flow with six datasets, and the experimental results demonstrate that LocaleGN outperforms existing state-of-the-art baseline models. It is also demonstrated that the learned knowledge from LocaleGN can be transferred across cities. The research outcomes can help to develop light-weighted traffic prediction systems, especially for cities lacking historically archived traffic data.