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Clustering Large-Scale Origin-Destination Pairs: A Case Study for Public Transit in Beijing

机译:大规模的起点-终点对的聚类:以北京公交为例

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With the extensive collection of various trajectories, a lot of trajectory mining methods have been developed and brought into effect in different applications. The same is true for trajectory clustering. It enables the construction of diverse applications (e.g., mobile social networks) and can promote the intelligence of existing services (e.g., optimizing public transit). In the paper, we propose a three-phase clustering strategy ODTC (Origin Destination pair oriented Trajectories Clustering) for the massive trajectories in the form of OD (Origin Destination) pairs and demonstrate the impact of trajectory clustering on evaluating and adjusting public transit operations. In our ODTC strategy, trajectories are partitioned in the first phase by coarsegrained clustering, reflecting an idea of divide and conquer. While during the second phase of fine-grained clustering, we model the relations of OD pairs as a sparse graph where the spatial and temporal features as well as the constraints of road networks are integrated into the similarity of trajectories. Then we apply a spectral clustering algorithm on the graph to capture clusters. In particular, in the third phase, we borrow the idea from text data mining and give a feasible method to mine the semantics of clusters. As a case study, we perform ODTC on the large-scale trajectories from the Beijing Public Transport Group. From the clustering results, we can observe the mobility patterns of bus passengers. Further, we exploit the clustering results to discover the dynamics of bus operations, evaluate the bus lines and provide support for making the decisions on bus operations.
机译:随着各种轨迹的广泛收集,已经开发了许多轨迹挖掘方法,并将其应用于不同的应用中。轨迹聚类也是如此。它可以构建各种应用程序(例如,移动社交网络),并可以促进现有服务的智能化(例如,优化公共交通)。在本文中,我们针对OD(原目的地)对形式的大规模轨迹提出了一种三阶段聚类策略ODTC(面向原目的地对的轨迹聚类),并演示了轨迹聚类对评估和调整公共交通运营的影响。在我们的ODTC策略中,轨迹在第一阶段通过粗粒度聚类划分,反映了分而治之的思想。在细粒度聚类的第二阶段,我们将OD对的关系建模为一个稀疏图,其中空间和时间特征以及道路网络的约束被整合到轨迹的相似性中。然后,我们在图上应用频谱聚类算法来捕获聚类。特别是在第三阶段,我们借鉴了文本数据挖掘的思想,并给出了一种可行的方法来挖掘集群的语义。作为案例研究,我们对北京公共交通集团的大型轨道进行了ODTC。从聚类结果中,我们可以观察公共汽车乘客的出行方式。此外,我们利用聚类结果来发现公交车运行的动态,评估公交线路,并为决策公交车提供支持。

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