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A Decentralized Private Data Transaction Pricing and Quality Control Method

机译:分散式私有数据交易定价和质量控制方法

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In the past few years, it has become increasingly popular to analyze the information obtained to develop services by conducting a decentralized survey of private data for specific populations. Privacy security requirements for data providers force operators to implement reasonable privacy protections. But increasing the investment in privacy protection will also lead to a decline in operator revenue. In this case, operators need to ensure the privacy and security requirements of users while ensuring the sustainability of customized services. To this end, We study the relationship between collecting data quality and operator strategy, quantifying the price of private data, and building a model to maximize operator profitability. Specifically, closed-form solutions for best privacy data prices and subscription fees are designed to maximize the gross profit of service providers. Also includes the collection of data quality factors to ensure that the user perceived quality of service can be guaranteed to a certain extent. Finally, we explored the relationship between spending, subscription fees, and maximum gross profit of carriers during the data collection phase, based on the distribution of different user groups' privacy attitudes. In particular, we also explored the relationship between adding additional noise and collecting data utility in a decentralized privacy protection scenario. The simulation results show that compared with the existing methods, the algorithm can maximize the collected data quality while ensuring the provider's privacy security requirements. In addition, we demonstrate the benefits of our dynamic pricing approach and its applicability to other private data pricing algorithms.
机译:在过去的几年中,通过对特定人群的私人数据进行分散调查来分析获得的信息以开发服务已经变得越来越普遍。数据提供商的隐私安全要求迫使运营商实施合理的隐私保护。但是增加对隐私保护的投资也将导致运营商收入的下降。在这种情况下,运营商需要在确保定制服务的可持续性的同时,确保用户的隐私和安全要求。为此,我们研究了收集数据质量和运营商策略,量化私有数据的价格以及建立最大化运营商盈利能力的模型之间的关系。具体而言,旨在获得最佳隐私数据价格和订阅费用的封闭式解决方案旨在最大限度地提高服务提供商的毛利润。还包括数据质量因子的收集,以确保可以在一定程度上保证用户感知的服务质量。最后,我们根据不同用户组的隐私态度分布,探索了数据收集阶段运营商的支出,订阅费用和最大毛利润之间的关系。特别是,我们还探讨了在分散的隐私保护方案中添加其他噪声与收集数据实用程序之间的关系。仿真结果表明,与现有方法相比,该算法在保证提供商隐私安全性要求的同时,可以最大程度地提高采集数据的质量。此外,我们演示了动态定价方法的优势及其在其他私有数据定价算法中的适用性。

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