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Adversity-Based Social Circles Inference via Context-Aware Mobility

机译:基于逆境的社会圈推论通过背景感知移动性

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The ubiquity of mobile devices use has generated huge volumes of location-aware contextual data, providing opportunities enriching various location-based social network (LBSN) applications - e.g., trip recommendation, ride-sharing allocation and taxi demand prediction etc. Trajectory-based social circle inference (TSCI), which aims at inferring the social relationships among users based on the human mobility data, has received great attention in recent years due to its importance in many LBSN applications. However, existing solutions suffer from three key challenges, including (1) lack of modeling contextual feature in user check-ins; (2) cannot capture the structural information in user motion patterns; (3) and fail to consider the underlying mobility distribution. In this paper, we propose a novel framework ASCI-CAM (Adversity-based Social Circles Inference via Context-Aware Mobility) to address the above challenges. ASCI-CAM is a graph-based model taking into account the contextual information associated with check-ins which, combined with an attentive auto-encoder, allows for semantic trajectory representation. We regularize the learned trajectory embedding with an adversarial learning procedure, which allows us to better understand the user mobility patterns and personalized trajectory distribution. Our extensive experiments on real-world mobility datasets demonstrate that our model achieves significant improvement over the state-of-the-art baselines.
机译:移动设备的无处不在产生了大量的位置感知语境数据,提供丰富基于位置的社交网络(LBSN)应用程序的机会 - 例如,巡回推荐,乘车共享分配和出租车需求预测等轨迹的社交圆圈推断(TSCI)旨在推断基于人类流动数据的用户之间的社会关系,近年来由于其在许多LBSN应用中的重要性而受到了极大的关注。但是,现有解决方案遭受了三个关键挑战,包括(1)用户办理登机手续中缺乏建模上下文特征; (2)无法捕获用户运动模式中的结构信息; (3)未能考虑潜在的流动分布。在本文中,我们提出了一种新颖的框架ASCI-CAM(基于逆境的社交圈推论,通过上下文感知移动性)来解决上述挑战。 ASCI-CAM是一种基于图形的模型,考虑到与支票相关的上下文信息,该语学信息与分娩自动编码器组合允许语义轨迹表示。我们将学习的轨迹与普通学习程序进行规范,这使我们能够更好地了解用户移动模式和个性化轨迹分布。我们对现实世界移动数据集的广泛实验表明,我们的模型实现了对最先进的基线的显着改善。

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