DPLink: User Identity Linkage via Deep Neural Network From Heterogeneous Mobility Data

J. Feng, Mingyang Zhang, Huandong Wang, Zeyu Yang, Chao Zhang, Yong Li, Depeng Jin
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引用次数: 68

Abstract

Online services are playing critical roles in almost all aspects of users' life. Users usually have multiple online identities (IDs) in different online services. In order to fuse the separated user data in multiple services for better business intelligence, it is critical for service providers to link online IDs belonging to the same user. On the other hand, the popularity of mobile networks and GPS-equipped smart devices have provided a generic way to link IDs, i.e., utilizing the mobility traces of IDs. However, linking IDs based on their mobility traces has been a challenging problem due to the highly heterogeneous, incomplete and noisy mobility data across services. In this paper, we propose DPLink, an end-to-end deep learning based framework, to complete the user identity linkage task for heterogeneous mobility data collected from different services with different properties. DPLink is made up by a feature extractor including a location encoder and a trajectory encoder to extract representative features from trajectory and a comparator to compare and decide whether to link two trajectories as the same user. Particularly, we propose a pre-training strategy with a simple task to train the DPLink model to overcome the training difficulties introduced by the highly heterogeneous nature of different source mobility data. Besides, we introduce a multi-modal embedding network and a co-attention mechanism in DPLink to deal with the low-quality problem of mobility data. By conducting extensive experiments on two real-life ground-truth mobility datasets with eight baselines, we demonstrate that DPLink outperforms the state-of-the-art solutions by more than 15% in terms of hit-precision. Moreover, it is expandable to add external geographical context data and works stably with heterogeneous noisy mobility traces. Our code is publicly available1.
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DPLink:基于异构移动数据的深度神经网络用户身份链接
在线服务在用户生活的几乎所有方面都扮演着至关重要的角色。用户在不同的在线业务中通常具有多个在线身份(id)。为了将分离的用户数据融合到多个服务中以获得更好的业务智能,服务提供商链接属于同一用户的在线id至关重要。另一方面,移动网络和配备gps的智能设备的普及提供了一种通用的方式来链接id,即利用id的移动痕迹。然而,由于跨服务的高度异构、不完整和嘈杂的移动数据,基于移动轨迹链接id一直是一个具有挑战性的问题。本文提出了基于端到端深度学习的DPLink框架,用于完成来自不同属性的不同服务的异构移动数据的用户身份链接任务。DPLink由特征提取器(包括位置编码器和轨迹编码器)和比较器(用于比较和决定是否将两个轨迹作为同一用户链接)组成,特征提取器包括从轨迹中提取代表性特征的位置编码器和轨迹编码器。特别地,我们提出了一种预训练策略,通过一个简单的任务来训练DPLink模型,以克服由不同源移动数据的高度异构特性带来的训练困难。此外,我们在DPLink中引入了多模态嵌入网络和共同关注机制,以解决移动数据的低质量问题。通过在两个真实的地面移动数据集上进行广泛的实验,我们证明DPLink在命中精度方面比最先进的解决方案高出15%以上。此外,该方法可扩展到添加外部地理环境数据,并能稳定地处理异构噪声移动轨迹。我们的代码是公开的。
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