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Discovering Frequent Movement Paths From Taxi Trajectory Data Using Spatially Embedded Networks and Association Rules

机译:使用空间嵌入式网络和关联规则从出租车轨迹数据中发现频繁移动的路径

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In view of the complex traffic flows, spatial interactions within a city exhibit the properties of dynamics, connectivity, and repeatability. This paper aims at mining spatial-temporal movement patterns from massive taxi trajectory data for discovering the inherent travel flow information within the urban system. Similar to the role of ocean circulation in a marine system, identifying the frequent paths and cycles of the travel flows within a city would be critical for understanding the principles behind the travel flow surfaces. Thus, we propose a multi-level method for the discovery of movement paths by incorporating the techniques of network analysis and association rules. Specifically, the proposed method begins by constructing a directed network on the subdivision of the study region, in which the node with geolocation represents the corresponding cell and the edge with weight represents the travel flow between neighboring cells. The method then adopts an extended label propagation clustering algorithm to identify frequent paths and cycles on the flow network within a specific time interval. Finally, to extract frequent paths during the whole time period, we also develop an association rules mining algorithm by modeling the edges as items and the paths in each time span as transactions. Experiment results demonstrate that our framework is able to effectively mine movement patterns in taxi trajectory data. Our results are expected to provide an avenue for further research, such as transportation planning and urban structure analysis.
机译:鉴于复杂的交通流,城市中的空间互动表现出动态性,连通性和可重复性。本文旨在从大量滑行轨迹数据中挖掘时空运动模式,以发现城市系统内固有的旅行流量信息。与海洋环流在海洋系统中的作用类似,识别城市中行驶流的频繁路径和周期对于理解行驶流背后的原理至关重要。因此,我们通过结合网络分析和关联规则技术,提出了一种用于发现运动路径的多级方法。具体而言,所提出的方法开始于在研究区域的细分区域上构建有向网络,其中具有地理位置的节点代表相应的单元格,具有权重的边缘代表相邻单元格之间的旅行流。然后,该方法采用扩展的标签传播聚类算法,以在特定时间间隔内识别流网络上的频繁路径和周期。最后,为了提取整个时间段中的频繁路径,我们还通过将边缘建模为项目,将每个时间跨度中的路径建模为事务来开发关联规则挖掘算法。实验结果表明,我们的框架能够有效地挖掘滑行轨迹数据中的运动模式。我们的结果有望为进一步的研究提供一条途径,例如交通规划和城市结构分析。

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