Graph Theory for Consent Management: A New Approach for Complex Data Flows

Dorota Filipczuk, Enrico H. Gerding, George Konstantinidis
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Abstract

Through legislation and technical advances users gain more control over how their data is processed, and they expect online services to respect their privacy choices and preferences. However, data may be processed for many different purposes by several layers of algorithms that create complex data workflows. To date, there is no existing approach to automatically satisfy fine-grained privacy constraints of a user in a way which optimises the service provider's gains from processing. In this article, we propose a solution to this problem by modelling a data flow as a graph. User constraints and processing purposes are pairs of vertices which need to be disconnected in this graph. We show that, in general, this problem is NP-hard and we propose several heuristics and algorithms. We discuss the optimality versus efficiency of our algorithms and evaluate them using synthetically generated data. On the practical side, our algorithms can provide nearly optimal solutions for tens of constraints and graphs of thousands of nodes, in a few seconds.

同意管理的图论:复杂数据流的新方法
通过立法和技术进步,用户对如何处理其数据有了更多的控制权,他们希望在线服务尊重他们的隐私选择和偏好。然而,数据可能会因多种不同目的而被多层算法处理,从而形成复杂的数据工作流。迄今为止,还没有一种现有方法能自动满足用户的细粒度隐私约束,从而优化服务提供商的处理收益。在本文中,我们通过将数据流建模为图形,提出了解决这一问题的方法。用户限制和处理目的是该图中需要断开的一对顶点。我们证明,一般来说,这个问题很难解决,并提出了几种启发式方法和算法。我们讨论了算法的最优性和效率,并使用合成数据对其进行了评估。在实际应用中,我们的算法可以在几秒钟内为数十个约束条件和数千个节点的图形提供近乎最优的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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