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Crowd-ML: A Privacy-Preserving Learning Framework for a Crowd of Smart Devices

机译:Crowd-ML:针对智能设备人群的隐私保护学习框架

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Smart devices with built-in sensors, computational capabilities, and network connectivity have become increasingly pervasive. Crowds of smart devices offer opportunities to collectively sense and perform computing tasks at an unprecedented scale. This paper presents Crowd-ML, a privacy-preserving machine learning framework for a crowd of smart devices, which can solve a wide range of learning problems for crowd sensing data with differential privacy guarantees. Crowd-ML endows a crowd sensing system with the ability to learn classifiers or predictors online from crowd sensing data privately with minimal computational overhead on devices and servers, suitable for practical large-scale use of the framework. We analyze the performance and scalability of Crowd-ML and implement the system with off-the-shelf smartphones as a proof of concept. We demonstrate the advantages of Crowd-ML with real and simulated experiments under various conditions.
机译:具有内置传感器,计算功能和网络连接的智能设备已经越来越普及。大量的智能设备提供了以前所未有的规模集体感知和执行计算任务的机会。本文提出了Crowd-ML,这是一种用于大量智能设备的保护隐私的机器学习框架,它可以解决具有差异性隐私保证的人群感知数据的广泛学习问题。 Crowd-ML赋予了人群感应系统以私下从人群感应数据中在线学习分类器或预测变量的能力,而设备和服务器上的计算开销却最小,适合于该框架的实际大规模使用。我们分析了Crowd-ML的性能和可伸缩性,并使用现成的智能手机实施该系统作为概念验证。我们通过在各种条件下进行的真实和模拟实验证明了Crowd-ML的优势。

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