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Distributed privacy-preserving mean estimation

机译:分布式隐私保留的平均估计

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摘要

Due to the rise of mobile computing and smartphones, a lot of information about groups has become accessible. This information shall often be kept secret. Hence distributed algorithms for privacy-preserving distribution estimation are needed. Most research currently focuses on privacy in a database, where a single entity has collected the secret information and privacy is ensured between query results and the database. In fully distributed systems such as sensor networks it is often infeasible to move the data towards a central entity for processing. Instead, distributed algorithms are needed. With this paper we propose a fully distributed, privacy-friendly, consensus-based approach. In our approach all nodes cooperate to generate a sufficiently random obfuscation of their secret values until the estimated and obfuscated values of the individual nodes can be safely published. Then the calculations can be done on this replacement containing only non-secret values but recovering some aspects (mean, standard deviation) of the original distribution.
机译:由于移动计算和智能手机的兴起,有关组的许多信息已变得可访问。此信息通常不得保密。因此,需要用于隐私保留分布估计的分布式算法。大多数研究目前专注于数据库中的隐私,其中单个实体已收集秘密信息,并且在查询结果和数据库之间确保了隐私。在诸如传感器网络之类的完全分布式系统中,它通常是不可行的,可以将数据朝向中央实体移动以进行处理。相反,需要分布式算法。凭借本文,我们提出了完全分布的,隐私性友好的基于共识的方法。在我们的方法中,所有节点都协作以生成其秘密值的充分随机混淆,直到可以安全发布各个节点的估计和混淆值。然后可以在此替换上完成计算,仅包含非秘密值,而是恢复原始分布的某些方面(平均标准偏差)。

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