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Privacy-Preserving Crowdsensing: Privacy Valuation, Network Effect, and Profit Maximization

机译:保持隐私的人群感知:隐私评估,网络效应和利润最大化

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In spite of the pronounced benefit brought by crowdsensing, a user would not participate in sensing without adequate incentive, indicating that effective incentive design plays a critical role in making crowdsensing a reality. In this work, we examine the impact of two conflicting factors on incentives for users' participation: 1) the concern about privacy leakage and 2) the (positive) network effect from many sensing participants. The former factor hinders privacy- aware users from participating, whereas the latter encourages users' participation. Taking into consideration both factors, we devise a privacy-preserving crowdsensing scheme, in which a reverse `privacy' auction is first run by the crowdsensing platform to select users based on their privacy valuations and the network effect. Then the trusted platform carries out differentially private data aggregation over the collected data such that the released sensing result remains useful for the task agent, while all participants' data privacy is guaranteed. A natural objective here is then to maximize the profit of the task agent, i.e., the difference between its utility and the total reward to the participants. To this end, the platform utilizes a random-sampling based mechanism for the 'privacy' auction, followed by a Laplace mechanism for data aggregation. We show that this auction mechanism design is 4-competitive, and further it exhibits desirable properties, including individual rationality, truthfulness, computational efficiency. Simulation results corroborate the theoretical properties of the proposed privacy-preserving crowdsensing scheme.
机译:尽管众筹带来了明显的好处,但如果没有足够的激励,用户将不会参与感知,这表明有效的激励设计在使众筹成为现实的过程中起着至关重要的作用。在这项工作中,我们研究了两个相互矛盾的因素对用户参与动机的影响:1)对隐私泄漏的关注,以及2)许多感知参与者的(正)网络效应。前者阻碍了了解隐私的用户的参与,而后者则鼓励用户的参与。考虑到这两个因素,我们设计了一种隐私保护的人群感知方案,该方案首先由人群感知平台进行反向“隐私”拍卖,以根据用户的隐私权评估和网络效应来选择用户。然后,受信任的平台对收集的数据执行差异化的私有数据聚合,以使释放的感测结果对任务代理仍然有用,同时确保所有参与者的数据隐私。于是,这里的自然目标是使任务代理的利润最大化,即其效用与对参与者的总奖励之间的差。为此,该平台利用基于随机采样的机制进行“隐私”拍卖,然后使用拉普拉斯机制进行数据聚合。我们表明,这种拍卖机制设计具有4竞争性,并且还展现出理想的属性,包括个人理性,真实性和计算效率。仿真结果证实了所提出的隐私保护人群感知方案的理论特性。

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