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Differentially Private Tree-Based Contextual Online Learning for Service Big Data Selection in IoT

机译:物联网中基于服务的大数据选择的基于差异私有树的上下文在线学习

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With the rapidly growing number of connected smart devices deployed and diverse services provided in the Internet of Things (IoT), selecting proper services for users is becoming more and more important. However, challenges exist as a result of the highly heterogeneous environments, characteristics of various kinds of users and the myriad services offered by many service providers, which have promising applications in the IoT era. In the meantime, users' contexts (e.g., location, time, and surroundings) are wildly utilized in the IoT scenario to better satisfy individuals' demands, raising privacy issues among people. To address these problems, we proposed a differentially private tree-based contextual online learning approach for IoT service selection to select suitable services for users. Leveraging on the historical records of services' and users' feedback, our algorithm achieves high prediction accuracy. Besides, instead of considering the services as individual items, we utilize a top-down cover tree structure to select services, which supports increasing large-scale dataset and diverse natural conditions. We theoretically prove that the accumulative regret of our approach has a sublinear bound and our experiment confirms that it can handle big data problems while achieving a balance between privacy-preserving level and service selection accuracy.
机译:随着部署的互联智能设备数量的迅速增长以及物联网(IoT)中提供的多样化服务,为用户选择合适的服务变得越来越重要。但是,由于高度异构的环境,各种用户的特征以及许多服务提供商提供的众多服务而带来的挑战,这些应用在物联网时代具有广阔的应用前景。同时,在物联网场景中广泛使用了用户的上下文(例如,位置,时间和周围环境)来更好地满足个人的需求,从而引发了人们之间的隐私问题。为了解决这些问题,我们为物联网服务选择提出了一种基于差异私有树的上下文在线学习方法,以为用户选择合适的服务。利用服务和用户反馈的历史记录,我们的算法可以实现较高的预测精度。此外,我们没有将服务视为单独的项目,而是利用自上而下的覆盖树结构来选择服务,这支持增加的大规模数据集和多样化的自然条件。从理论上讲,我们证明了该方法的累积遗憾具有次线性范围,并且我们的实验证实,该方法可以处理大数据问题,同时在隐私保护级别和服务选择准确性之间取得平衡。

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