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Modeling Dynamic Social Behaviors with Time-Evolving Graphs for User Behavior Predictions

机译:对用户行为预测的时间不断发展的动态社会行为建模

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The full coverage of Wi-Fi signals and the popularization of intelligent card systems provide a large volume of data that contain human mobility patterns. Effectively utilizing such data to make user behavior predictions finds useful applications such as predictive behavior analysis, personalized recommendation, and location-aware services. Existing methods for user behavior predictions merely capture temporal dependencies within individual historical records. We argue that user behaviors are largely affected by friends in their social circles and such influences are dynamic due to users' dynamic social behaviors. In this paper, we propose a model named SDSIM which consists of three independent and complementary modules to jointly model the influences of user dynamic social behaviors, user demographics similarities, and individual-level behavior patterns. We construct time-evolving graphs to indicate user dynamic social behaviors and design a novel component named DSBcell which captures not only the social influences but also the regularity and periodicity of user social behaviors. We also construct a graph based on user similarities in demographics and generate a representation for each user. Experiments on two real-world datasets for multiple user behavior-related prediction tasks prove the effectiveness of our proposed model compared with state-of-the-art methods.
机译:Wi-Fi信号的全面覆盖以及智能卡系统的推广提供了大量包含人类移动模式的数据。有效地利用这些数据来使用户行为预测发现有用的应用程序,例如预测行为分析,个性化推荐和位置感知服务。用户行为预测的现有方法仅捕获各个历史记录中的时间依赖性。我们认为,由于用户的动态社会行为,用户行为在很大程度上受到社交界的影响,并且这种影响是由于用户的动态社会行为导致的动态。在本文中,我们提出了一个名为SDSIM的模型,该模型由三个独立和互补的模块组成,共同模拟用户动态社会行为,用户人口统计学相似度和个人级别行为模式的影响。我们构建时间不断发展的图表,以指示用户动态社交行为和设计名为DSBCell的新组件,不仅捕获了社会影响,还捕获了用户社会行为的规律性和周期。我们还根据人口统计数据中的用户相似性构建一个图形,并为每个用户生成表示。对于多个用户行为相关预测任务的两个真实数据集的实验证明了我们所提出的模型的有效性与最先进的方法相比。

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