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Personalized Data Collection Based on Local Differential Privacy in the Mobile Crowdsensing

机译:基于移动人群中的本地差异隐私的个性化数据收集

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Mobile crowdsensing is growing in popularity by collecting environmental information from participants' mobile phones. However, the sensing data may carry sensitive information of participants so as to violate their privacy. Thus, local differential privacy (LDP) is proposed to protect participants' privacy during data collection. But most recent studies only apply LDP to the data collection without considering the participant's personal privacy preservation requirement so as to reduce the data utility when aggregator tries to execute the frequency estimation. In this paper, a new LDP algorithm with the optimal privacy perturbation parameter based on Basic RAPPOR is proposed to improve data utility by minimizing the expected mean square error (EMSE). Then, a personalized data collection scheme based on the new LDP is elaborately presented to realize the fact that every participant can select his/her required privacy level to achieve personalized privacy preservation while guaranteeing higher data utility. Finally, the proposed personalized data collection scheme is simulated and verified on both synthetic and real datasets, which proves the feasibility and effectiveness of the proposed scheme in terms of the MSE.
机译:通过从参与者的手机收集环境信息,移动人群越来越受欢迎。然而,感测数据可以携带参与者的敏感信息,以便违反他们的隐私。因此,建议在数据收集期间保护参与者隐私的局部差异隐私(LDP)。但最近的研究仅在不考虑参与者的个人隐私保留要求的情况下将LDP应用于数据收集,以便在聚合器尝试执行频率估计时减少数据实用程序。在本文中,提出了一种新的LDP算法,具有基于基本rAppor的最佳隐私扰动参数,通过最小化预期的均方误差(EMSE)来改善数据实用程序。然后,精心提出了一种基于新LDP的个性化数据收集方案,以实现每个参与者可以选择所需的隐私级别来实现个性化隐私保存的事实,同时保证更高的数据实用程序。最后,在合成和实际数据集中模拟和验证了所提出的个性化数据收集方案,从而证明了在MSE方面的拟议方案的可行性和有效性。

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