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首页> 外文期刊>IEEE transactions on mobile computing >Distributed Deep Learning Optimized System over the Cloud and Smart Phone Devices
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Distributed Deep Learning Optimized System over the Cloud and Smart Phone Devices

机译:在云和智能手机设备上分布深度学习优化系统

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Deep learning has been becoming a promising focus in data mining research. With deep learning techniques, researchers can discover deep properties and features of events from quantitative mobile sensor data. However, many data sources are geographically separated and have strict privacy, security, and regulatory constraints. Upon releasing the privacy-sensitive data, these data sources generally no longer physically possess their data and cannot interfere with the way their personal data being used. Therefore, it is necessary to explore distributed data mining architecture which is able to conduct consensus learning based on needs. Accordingly, we propose a distributed deep learning optimized system which contains a cloud server and multiple smartphone devices with computation capabilities and each device is served as a personal mobile data hub for enabling mobile computing while preserving data privacy. The proposed system keeps the private data locally in smartphones, shares trained parameters, and builds a global consensus model. The feasibility and usability of the proposed system are evaluated by three experiments and related discussion. The experimental results show that the proposed distributed deep learning system can reconstruct the behavior of centralized training. We also measure the cumulative network traffic in different scenarios and show that the partial parameter sharing strategy does not only preserve the performance of the trained model but also can reduce network traffic. User data privacy is protected on two levels. First, local private training data do not need to be shared with other people and the user has full control of their personal training data all the time. Second, only a small fraction of trained gradients of the local model are selected for sharing, which further reduces the risk of information leaking.
机译:深度学习一直成为数据挖掘研究的有希望的焦点。通过深入学习技术,研究人员可以发现来自定量移动传感器数据的事件的深度特性和特征。但是,许多数据源是地理位置分开的并且具有严格的隐私,安全和监管限制。在释放隐私敏感数据时,这些数据源通常不再物理地拥有其数据,并且不能干扰所使用的个人数据的方式。因此,有必要探索分布式数据挖掘体系结构,该型架构能够根据需要进行共识学习。因此,我们提出了一种分布式深度学习优化系统,该系统包含云服务器和具有计算能力的多个智能手机设备,并且每个设备被用作个人移动数据集线器,用于在保留数据隐私的同时启用移动计算。所提出的系统在智能手机上本地保留私有数据,培训参数,并构建全局共识模型。所提出的系统的可行性和可用性由三个实验和相关讨论进行评估。实验结果表明,拟议的分布式深度学习系统可以重建集中培训的行为。我们还测量不同场景中的累积网络流量,并显示部分参数共享策略不仅保留了培训的模型的性能,还可以减少网络流量。用户数据隐私受到两个级别的保护。首先,当地私人培训数据不需要与其他人共享,用户一直完全控制其个人培训数据。其次,仅选择培训的本地模型的一小部分用于共享,这进一步降低了信息泄漏的风险。

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