Efficient and Effective Similar Subtrajectory Search: A Spatial-aware Comprehension Approach

Liwei Deng, Hao-Lun Sun, Rui Sun, Yan Zhao, Han Su
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引用次数: 9

Abstract

Although many applications take subtrajectories as basic units for analysis, there is little research on the similar subtrajectory search problem aiming to return a portion of a trajectory (i.e., subtrajectory), which is the most similar to a query trajectory. We find that in some special cases, when a grid-based metric is used, this problem can be formulated as a reading comprehension problem, which has been studied extensively in the field of natural language processing (NLP). By this formulation, we can obtain faster models with better performance than existing methods. However, due to the difference between natural language and trajectory (e.g., spatial relationship), it is impossible to directly apply NLP models to this problem. Therefore, we propose a Similar Subtrajectory Search with a Graph Neural Networks framework. This framework contains four modules including a spatial-aware grid embedding module, a trajectory embedding module, a query-context trajectory fusion module, and a span prediction module. Specifically, in the spatial-aware grid embedding module, the spatial-based grid adjacency is constructed and delivered to the graph neural network to learn spatial-aware grid embedding. The trajectory embedding module aims to model the sequential information of trajectories. The purpose of the query-context trajectory fusion module is to fuse the information of the query trajectory to each grid of the context trajectories. Finally, the span prediction module aims to predict the start and the end of a subtrajectory for the context trajectory, which is the most similar to the query trajectory. We conduct comprehensive experiments on two real world datasets, where the proposed framework outperforms the state-of-the-art baselines consistently and significantly.
高效相似子轨迹搜索:一种空间感知理解方法
虽然很多应用都以子轨迹作为分析的基本单位,但是针对返回轨迹中与查询轨迹最相似的部分(即子轨迹)的相似子轨迹搜索问题的研究却很少。我们发现,在一些特殊情况下,当使用基于网格的度量时,该问题可以被表述为阅读理解问题,这在自然语言处理(NLP)领域得到了广泛的研究。通过此公式,我们可以获得比现有方法更快的模型,并且具有更好的性能。然而,由于自然语言和轨迹(如空间关系)之间的差异,不可能直接将NLP模型应用于该问题。因此,我们提出了一种基于图神经网络框架的相似子轨迹搜索方法。该框架包含四个模块:空间感知网格嵌入模块、轨迹嵌入模块、查询-上下文轨迹融合模块和跨度预测模块。具体而言,在空间感知网格嵌入模块中,构建基于空间的网格邻接关系,并将其传递给图神经网络学习空间感知网格嵌入。轨迹嵌入模块的目的是对轨迹的序列信息进行建模。查询-上下文轨迹融合模块的目的是将查询轨迹的信息融合到上下文轨迹的每个网格中。最后,跨度预测模块的目的是预测上下文轨迹的子轨迹的开始和结束,这是与查询轨迹最相似的。我们在两个真实世界的数据集上进行了全面的实验,其中提出的框架始终且显著地优于最先进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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