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LCE: A Location Category Embedding Model for Predicting the Category Labels of POIs

机译:LCE:预测POI类别标签的位置类别嵌入模型

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The proliferation of location-based social networks, makes it possible to record human mobility using an array of points-of-interest (POIs). Exploring the semantic meanings of POIs can be of great importance to many urban computing applications, e.g., personalized route recommendation and user trajectory clustering. Nonetheless, such information is not always available in practice. This paper aims at predicting the category labels, which will provide a succinct summarization of POIs. In particular, we first propose a Location Category Embedding (LCE) model, which projects user POIs and their associated category labels into the same vector space, and then identify the POIs' most related category labels according to their similarities. To capture the influence that might affect users' moving behavior, LCE considers sequential pattern, personal preference, and temporal influence, and further models the connection between the POIs and the three factors. Experimental results on two real-world datasets prove the effectiveness of the proposed method.
机译:基于位置的社交网络的扩散使得可以使用兴趣点阵列(POI)来记录人类流动。探索POI的语义含义可能非常重视许多城市计算应用,例如,个性化路由推荐和用户轨迹集群。尽管如此,这些信息并不总是在实践中可用。本文旨在预测类别标签,这将提供石头的简洁摘要。特别是,我们首先提出了一个位置类别嵌入(LCE)模型,将用户POI和其相关的类别标签投影到同一矢量空间中,然后根据其相似之处识别POIS最相关的类别标签。为了捕捉可能影响用户移动行为的影响,LCE考虑顺序模式,个人偏好和时间影响,进一步模拟POI和三个因素之间的连接。两个真实数据集的实验结果证明了该方法的有效性。

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