涉及隐私的数据分析项目中非货币激励的博弈论研究

Michela Chessa, Jens Grossklags, P. Loiseau
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引用次数: 37

摘要

个人向社交网站等数字存储库提供的个人信息数量大幅增加。这些数据的存在为包括医学和公共政策在内的各个重要社会领域的数据分析研究提供了前所未有的机会。这些分析的结果可以被认为是一种公共产品,既有利于数据贡献者,也有利于没有提供数据的个人。同时,个人信息的发布给贡献者带来了感知和实际的隐私风险。我们的研究解决了这个问题。在我们的工作中,我们研究了一个博弈论模型,其中个人以两种方式控制数据分析项目的参与:1)个人可以以自己选择的精度水平贡献数据,2)个人可以决定他们是否想要贡献(或不贡献)。从分析人员的角度来看,我们调查研究分析人员在多大程度上具有设置数据精度需求的灵活性,以便个人仍然愿意为项目做出贡献,并且评估的质量得到改善。我们研究了同质和异质个体群体的权衡方案,并确定了反映最优参与水平和贡献精度的纳什均衡。我们进一步证明,通过对用户可以揭示的数据的精度施加下限,分析人员可以大大提高分析的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Game-Theoretic Study on Non-monetary Incentives in Data Analytics Projects with Privacy Implications
The amount of personal information contributed by individuals to digital repositories such as social network sites has grown substantially. The existence of this data offers unprecedented opportunities for data analytics research in various domains of societal importance including medicine and public policy. The results of these analyses can be considered a public good which benefits data contributors as well as individuals who are not making their data available. At the same time, the release of personal information carries perceived and actual privacy risks to the contributors. Our research addresses this problem area. In our work, we study a game-theoretic model in which individuals take control over participation in data analytics projects in two ways: 1) individuals can contribute data at a self-chosen level of precision, and 2) individuals can decide whether they want to contribute at all (or not). From the analyst's perspective, we investigate to which degree the research analyst has flexibility to set requirements for data precision, so that individuals are still willing to contribute to the project, and the quality of the estimation improves. We study this tradeoffs scenario for populations of homogeneous and heterogeneous individuals, and determine Nash equilibrium that reflect the optimal level of participation and precision of contributions. We further prove that the analyst can substantially increase the accuracy of the analysis by imposing a lower bound on the precision of the data that users can reveal.
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