情境感知变分轨迹编码与人类移动性推理

Fan Zhou, Xiaoli Yue, Goce Trajcevski, Ting Zhong, Kunpeng Zhang
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引用次数: 29

摘要

揭示人类移动模式是许多下游应用程序的重要任务,如兴趣点(POI)推荐和个性化旅行计划。在各种顺序建模方法和表示技术中都存在令人信服的结果。然而,在与运动相关的抽象主题方面发现和利用轨迹的上下文可以提供对模式动态的更全面的理解。我们提出了一种基于学习轨迹上下文的移动模式挖掘新范式,以及一种基于上下文感知的变分轨迹编码和人类移动性推理(CATHI)方法,该方法通过以下框架来学习用户轨迹表示:(1)变分编码器和循环编码器;(2)变分关注层;(3)两个解码器。我们同时处理两个子任务:(T1)恢复用户路由(轨迹重建);(T2)预测用户的行程(轨迹预测)。我们证明了编码的上下文轨迹向量有效地表征了层次移动语义,从中可以解码轨迹的隐含意义。我们在几个公共数据集上评估了我们的方法,并证明与最先进的方法相比,所提出的CATHI可以有效地提高两个子任务的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-aware Variational Trajectory Encoding and Human Mobility Inference
Unveiling human mobility patterns is an important task for many downstream applications like point-of-interest (POI) recommendation and personalized trip planning. Compelling results exist in various sequential modeling methods and representation techniques. However, discovering and exploiting the context of trajectories in terms of abstract topics associated with the motion can provide a more comprehensive understanding of the dynamics of patterns. We propose a new paradigm for moving pattern mining based on learning trajectory context, and a method - Context-Aware Variational Trajectory Encoding and Human Mobility Inference (CATHI) - for learning user trajectory representation via a framework consisting of: (1) a variational encoder and a recurrent encoder; (2) a variational attention layer; (3) two decoders. We simultaneously tackle two subtasks: (T1) recovering user routes (trajectory reconstruction); and (T2) predicting the trip that the user would travel (trajectory prediction). We show that the encoded contextual trajectory vectors efficiently characterize the hierarchical mobility semantics, from which one can decode the implicit meanings of trajectories. We evaluate our method on several public datasets and demonstrate that the proposed CATHI can efficiently improve the performance of both subtasks, compared to state-of-the-art approaches.
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