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Privacy-preserving inference in crowdsourcing systems

机译:众包系统中的隐私保护推理

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Machine learning has widely been used in crowdsourcing systems to analyze the behavior of their mobile users. However, it naturally raises privacy concerns, as personal data needs to be collected and analyzed in the cloud, and results need to be sent back to the users to improve their local estimates. In this paper, we focus on the use of a specific type of learning algorithms, called maximum a posteriori (MAP) inference, in crowdsourcing systems, and use a crowdsourced localization system as an example. With MAP inference, the accuracy of each estimate of the user state may be improved by analyzing other users' estimates. Naturally, the privacy of the user state needs to be protected. Within the general framework of differential privacy, we show how private user states can be perturbed while preserving statistically accurate results. For the crowdsourcing system, we design a non-interactive mechanism for a group of users to perform inference without revealing their true states to any other party. The mechanism is implemented and verified in an indoor localization system. By comparing with the state-of-the-art, we have shown that our proposed privacy-preserving mechanism produces highly accurate results efficiently.
机译:机器学习已在众包系统中广泛用于分析其移动用户的行为。但是,由于需要在云中收集和分析个人数据,并且需要将结果发送回用户以改善他们的本地估算,因此自然会引起隐私问题。在本文中,我们专注于在众包系统中使用一种称为最大后验(MAP)推理的特定类型的学习算法,并以众包本地化系统为例。利用MAP推断,可以通过分析其他用户的估计来提高用户状态的每个估计的准确性。自然,需要保护用户状态的隐私。在差异性隐私的一般框架内,我们展示了如何在保留统计准确结果的同时扰动私人用户状态。对于众包系统,我们设计了一种非交互机制,供一组用户执行推理而不会向任何其他方透露其真实状态。该机制是在室内定位系统中实现和验证的。通过与最新技术进行比较,我们已经表明,我们提出的隐私保护机制可以有效地产生高度准确的结果。

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