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CEM: A Convolutional Embedding Model for Predicting Next Locations

机译:CEM:用于预测下一个地方的卷积嵌入模型

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摘要

The widespread use of positioning devices and cameras has given rise to a deluge of trajectory data (e.g., vehicle passage records and check-in data), offering great opportunities for location prediction. One problem that has received much attention recently is predicting next locations for an object given previous locations. Several location prediction methods based on embedding learning have been proposed to tackle this issue. They usually focus on check-in trajectories and model sequential locations using an average of the embedding vectors. In this paper, we have proposed a Convolutional Embedding Model (CEM) to predict next locations using traffic trajectory data, via modeling the relative ordering of locations with a one-dimensional convolution. CEM is further augmented by considering constraints posed by road networks in the traffic trajectory data, learning a double-prototype representation for each location to eliminate the incorrect location transitions as well as modeling the combination of factors (such as sequential, personal, and temporal) that affect the human mobility patterns, and thus offers a more accurate prediction than just accounting for sequential patterns. Experimental results on two real-world trajectory datasets show that CEM is effective and outperforms the state-of-the-art methods.
机译:定位装置和摄像机的广泛使用已经引起了轨迹数据的酝酿(例如,车辆通道记录和登记数据),为位置预测提供了很大的机会。最近接受了很多关注的一个问题是预测给定位置给出的对象的下一个位置。提出了基于嵌入学习的几种位置预测方法来解决这个问题。它们通常使用嵌入向量的平均值关注登记轨迹和模型顺序位置。在本文中,我们提出了一种卷积嵌入模型(CEM)来预测使用交通轨迹数据来预测下一个位置,通过使用一维卷积建模位置的相对排序。通过考虑在交通轨迹数据中的道路网络构成的约束,学习每个位置的双原型表示来进一步增强CEM,以消除不正确的位置转换以及建模因素的组合(例如顺序,个人和时间)影响人类移动模式,因此提供比仅占顺序模式的更准确的预测。两个现实世界轨迹数据集的实验结果表明,CEM是有效和优于最先进的方法。

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