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Mobile Social Data Learning for User-Centric Location Prediction With Application in Mobile Edge Service Migration

机译:用于以用户为中心的位置预测的移动社交数据学习及其在移动边缘服务迁移中的应用

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摘要

Recently, location prediction has attracted considerable research effort because of the popularity of location-based services, such as mobile advertising and recommendations. With the unprecedented proliferation of mobile social networks, such as WeChat and Twitter, we are able to use location service to bridge the online and offline worlds, which is of great significance to many smart city applications. Different from existing studies, in this paper, we promote a user-centric location prediction approach by leveraging a user's local mobile social information without involving other users' location privacy. We propose a factor graph learning model that integrates not only user's social and network information but also the correlations between a user's locations into a unified framework. Furthermore, we use ReliefF algorithm to select user-specific significant features for location prediction and define the measure of location entropy to study the similarity between location, network status, and social behavior. To show the benefit of precise location prediction, we further apply it to personalized service migration in mobile edge computing (MEC) and accordingly propose prediction-based amortizing algorithm and lazy migration algorithm that can well balance the tradeoff between migration cost and nonmigration latency in a cost-efficient manner. We conduct extensive experiments using a real-world data trace, which shows that our model performs much better in location prediction compared with several classic methods and the MEC service quality can be significantly enhanced by leveraging the location prediction.
机译:最近,由于基于位置的服务(例如移动广告和推荐)的普及,位置预测吸引了相当多的研究工作。随着微信和Twitter等移动社交网络的空前普及,我们能够使用位置服务桥接在线和离线世界,这对于许多智能城市应用而言都具有重要意义。与现有研究不同,在本文中,我们通过利用用户的本地移动社交信息来推广以用户为中心的位置预测方法,而不涉及其他用户的位置隐私。我们提出了一种因子图学习模型,该模型不仅将用户的社交和网络信息整合在一起,而且还将用户位置之间的相关性整合到一个统一的框架中。此外,我们使用ReliefF算法选择特定于用户的重要特征进行位置预测,并定义位置熵的度量,以研究位置,网络状态和社交行为之间的相似性。为了展示精确位置预测的优势,我们将其进一步应用于移动边缘计算(MEC)中的个性化服务迁移,并相应地提出了基于预测的摊销算法和惰性迁移算法,它们可以很好地平衡迁移成本与非迁移延迟之间的权衡。具有成本效益的方式。我们使用现实世界的数据跟踪进行了广泛的实验,这表明我们的模型与几种经典方法相比,在位置预测方面的性能要好得多,并且通过利用位置预测可以显着提高MEC服务质量。

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