私有数据商业化的对抗契约设计

Parinaz Naghizadeh Ardabili, Arunesh Sinha
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引用次数: 8

摘要

数据收集和机器学习技术的激增为数据聚合器将私人数据商业化创造了机会。在本文中,我们将数据货币化问题作为一个机制设计问题来研究,特别是使用契约理论的方法。我们提出的对抗性合约设计框架为经典合约理论的建立提供了一个基本的扩展,以解释诚实买家对数据需求的异质性,以及可能购买数据以损害其隐私的对抗性买家的存在。我们提出了对手价格$(PoAdv)$的概念,以量化敌对用户对数据卖方收入的影响,并为各种类型的对手效用提供了$PoAdv$的界限。我们还提供了一种快速近似技术来计算存在对手的合约。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial Contract Design for Private Data Commercialization
The proliferation of data collection and machine learning techniques has created an opportunity for commercialization of private data by data aggregators. In this paper, we study this data monetization problem as a mechanism design problem, specifically using a contract-theoretic approach. Our proposed adversarial contract design framework provides a fundamental extension to the classic contract theory set-up in order to account for the heterogeneity in honest buyers' demands for data, as well as the presence of adversarial buyers who may purchase data to compromise its privacy. We propose the notion of Price of Adversary $(PoAdv)$ to quantify the effects of adversarial users on the data seller's revenue, and provide bounds on the $PoAdv$ for various classes of adversary utility. We also provide a fast approximate technique to compute contracts in the presence of adversaries.
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