Personal data is becoming one of the most essential resources in today's information-based society. Accordingly, there is a growing interest in data markets, which operate data trading services between data providers and data consumers. One issue the data markets have to address is that of the potential threats to privacy. Usually some kind of protection must be provided, which generally comes to the detriment of utility. A correct pricing mechanism for private data should therefore depend on the level of privacy. In this paper, we propose a model of data federation in which data providers, who are, generally, less influential on the market than data consumers, form a coalition for trading their data, simultaneously shielding against privacy threats by means of differential privacy. Additionally, we propose a technique to price private data, and an revenue-distribution mechanism to distribute the revenue fairly in such federation data trading environments. Our model also motivates the data providers to cooperate with their respective federations, facilitating a fair and swift private data trading process. We validate our result through various experiments, showing that the proposed methods provide benefits to both data providers and consumers.
翻译:个人数据正在成为当今信息型社会最重要的资源之一。因此,人们对数据市场越来越感兴趣,数据市场管理数据提供者和数据消费者之间的数据交易服务。数据市场必须处理的一个问题是对隐私的潜在威胁。通常必须提供某种保护,这通常会损害效用。因此,私人数据的正确定价机制应当取决于隐私程度。在本文件中,我们提出了一个数据联合会模式,数据提供者在一般情况下比数据消费者在市场上影响力小,可以组成一个数据交易联盟,同时通过不同的隐私方式保护隐私威胁。此外,我们提出对私人数据定价的方法,以及公平分配这种联邦数据交易环境中收入的收入分配机制。我们的模式还激励数据提供者与各自的联合会合作,促进公平和迅速的私人数据交易进程。我们通过各种实验验证我们的结果,表明拟议的方法既有利于数据提供者,也有利于消费者。