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Random dictatorship for privacy-preserving social choice

机译:保留隐私式社交选择的随机独裁统治

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摘要

Social choice provides methods for collective decisions. They include methods for voting and for aggregating rankings. These methods are used in multiagent systems for similar purposes when decisions are to be made by agents. Votes and rankings are sensitive information. Because of that, privacy mechanisms are needed to avoid the disclosure of sensitive information. Cryptographic techniques can be applied in centralized environments to avoid the disclosure of sensitive information. A trusted third party can then compute the outcome. In distributed environments, we can use a secure multiparty computation approach for implementing a collective decision method. Other privacy models exist. Differential privacy and k-anonymity are two of them. They provide privacy guarantees that are complementary to multiparty computation approaches, and solutions that can be combined with the cryptographic ones, thus providing additional privacy guarantees, e.g., a differentially private multiparty computation model. In this paper, we propose the use of probabilistic social choice methods to achieve differential privacy. We use the method called random dictatorship and prove that under some circumstances differential privacy is satisfied and propose a variation that is always compliant with this privacy model. Our approach can be implemented using a centralized approach and also a decentralized approach. We briefly discuss these implementations.
机译:社交选择为集体决策提供了方法。它们包括投票和聚集排名的方法。这些方法用于多才系统,用于代理的决策时类似目的。投票和排名是敏感的信息。因此,需要隐私机制来避免披露敏感信息。加密技术可以应用于集中环境,以避免披露敏感信息。然后,可信的第三方可以计算结果。在分布式环境中,我们可以使用安全的多方计算方法来实现集体决策方法。存在其他隐私模型。差异隐私和k-匿名是其中两个。它们提供隐私保障,这些保证是对多重计算方法互补的,以及可以与加密器组合的解决方案,从而提供额外的隐私保证,例如差别私有多方计算模型。在本文中,我们建议使用概率的社会选择方法来实现差异隐私。我们使用称为随机独裁统治的方法,并证明在某些情况下,满足差异隐私,并提出始终符合本隐私模型的变化。我们的方法可以使用集中方法和分散的方法来实现。我们简要讨论了这些实现。

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