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Heterogeneous graph-based joint representation learning for users and POIs in location-based social network

机译:基于位置的社交网络中基于异构图的用户和POI联合表示学习

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Learning latent representations for users and points of interests (POIs) is an important task in location-based social networks (LBSN), which could largely benefit multiple location-based services, such as POI recommendation and social link prediction. Many contextual factors, like geographical influence, user social relationship and temporal information, are available in LBSN and would be useful for this task. However, incorporating all these contextual factors for user and POI representation learning in LBSN remains challenging, due to their heterogeneous nature. Although the encouraging performance of POI recommendation and social link prediction are delivered, most of the existing representation learning methods for LBSN incorporate only one or two of these contextual factors. In this paper, we propose a novel joint representation learning framework for users and POIs in LBSN, named UP2VEC. In UP2VEC, we present a heterogeneous LBSN graph to incorporate all these aforementioned factors. Specifically, the transition probabilities between nodes inside the heterogeneous graph are derived by jointly considering these contextual factors. The latent representations of users and POIs are then learnt by matching the topological structure of the heterogeneous graph. For evaluating the effectiveness of UP2VEC, a series of experiments are conducted with two real-world datasets (Foursquare and Gowalla) in terms of POI recommendation and social link prediction. Experimental results demonstrate that the proposed UP2VEC significantly outperforms the existing state-of-the-art alternatives. Further experiment shows the superiority of UP2VEC in handling cold-start problem for POI recommendation.
机译:在基于位置的社交网络(LBSN)中,学习用户和兴趣点(POI)的潜在表示形式是一项重要任务,它可以极大地受益于多个基于位置的服务,例如POI推荐和社交链接预测。 LBSN中提供了许多上下文因素,例如地理影响力,用户社会关系和时间信息,这对于完成此任务很有用。然而,由于它们的异质性,在LBSN中将所有这些上下文因素纳入用户和POI表示学习仍然具有挑战性。尽管提供了令人鼓舞的POI推荐和社交链接预测性能,但是LBSN的大多数现有表示学习方法仅包含这些上下文因素中的一个或两个。在本文中,我们为LBSN中的用户和POI提出了一种新颖的联合表示学习框架,名为UP2VEC。在UP2VEC中,我们提出了一个异构的LBSN图,以纳入所有上述所有因素。具体而言,通过共同考虑这些上下文因素,可以得出异构图内部节点之间的转移概率。然后通过匹配异构图的拓扑结构来学习用户和POI的潜在表示。为了评估UP2VEC的有效性,在POI推荐和社交链接预测方面,使用两个真实世界的数据集(Foursquare和Gowalla)进行了一系列实验。实验结果表明,提出的UP2VEC明显优于现有的最新技术。进一步的实验表明,UP2VEC在处理POI推荐的冷启动问题方面具有优势。

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