在图中寻找结构和时间上相似的轨迹

R. Grossi, Andrea Marino, Shima Moghtasedi
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引用次数: 3

摘要

对网络中相似运动的分析为不同的应用提供了有用的信息,比如路由推荐。我们对有效检索与给定查询轨迹相似的轨迹的算法感兴趣。为了完成这个任务,许多研究都集中在提取轨迹的几何信息上。本文研究了沿网络路径运动轨迹的性质。我们通过利用轨迹的时间方面和底层网络的结构提供了一个相似函数。我们提出了一种近似技术,以一种有效的方式以可接受的精度提供关于查询轨迹的top-k相似轨迹。我们在真实的网络中对我们的方法进行了研究,实验结果表明了我们提出的方法的有效性。
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Finding Structurally and Temporally Similar Trajectories in Graphs
The analysis of similar motions in a network provides useful information for different applications like route recommendation. We are interested in algorithms to efficiently retrieve trajectories that are similar to a given query trajectory. For this task many studies have focused on extracting the geometrical information of trajectories. In this paper we investigate the properties of trajectories moving along the paths of a network. We provide a similarity function by making use of both the temporal aspect of trajectories and the structure of the underlying network. We propose an approximation technique that offers the top-k similar trajectories with respect to a query trajectory in an efficient way with acceptable precision. We investigate our method over real-world networks, and our experimental results show the effectiveness of the proposed method.
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