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A New Traffic-Mining Approach for Unveiling Typical Global Evolutions of Large-Scale Road Networks

机译:一种新的交通挖掘方法,揭示大型道路网络典型全球演变

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In this paper, we present a new traffic-mining approach for automatic unveiling of typical global evolution of large-scale road networks. Our method uses as input a history of continuous traffic states (typically measured by travel times) of *all* links of the road graph. This historical data concatenated in a link/time matrix is then approximated with a locality-preserving Non-negative Matrix Factorization (NMF) method. The network-level traffic state similarity takes into account the graph topology by systematically combining link-wise comparisons with same measure on adjacent links. Based on the obtained matrix factorization, we project original high-dimensional network-level traffic information into a feature space (that of NMF components) of much lower dimensionality than original data. Importantly, because we use a modified NMF ensuring locality-preserving property (LP-NMF), the proximity of data-points in low-dim projected space correspond to proximity also in original high-dim space. We can therefore apply standard clustering methods easily in low-dim space, and directly deduce from its output pertinent categorization of global network traffic states and dynamics. Experimentations on simulated data with a large realistic network of more than 13000 links have been done, and show that our method allows to easily obtain meaningful partition of the attained global traffic states, and to deduce a categorization of the global daily evolution.
机译:在本文中,我们提出了一种新的交通挖掘方法,用于自动揭通大型道路网络的典型全球演变。我们的方法用作输入的连续交通状态的历史(通常通过旅行时间测量)的道路图的所有*链路。然后,在链路/时间矩阵中连接的该历史数据随着位置保留的非负矩阵分解(NMF)方法近似。网络级流量状态相似度通过系统地结合了与相邻链路上的相同测量相同的链路明智的比较来考虑图形拓扑。基于所获得的矩阵分解,我们将原始的高维网络级流量信息投影为特征空间(NMF分量的NMF分量)的维度低于原始数据。重要的是,因为我们使用修改的NMF确保了局部性保留属性(LP-NMF),所以低昏暗的投影空间中的数据点的接近也对应于原始高点空间的接近度。因此,我们可以在低调空间中轻松应用标准聚类方法,并直接从其全局网络交通状态和动态的输出相关分类。已经完成了具有超过13000多个链接的大型现实网络的模拟数据的实验,并表明我们的方法允许轻松获得达到的全球交通态的有意义的分区,并推断出全球日常演化的分类。

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