Secure Key Management for Multi-Party Computation in MOZAIK

Enzo Marquet, Jerico Moeyersons, Erik Pohle, Michiel Van Kenhove, Aysajan Abidin, B. Volckaert
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Abstract

The immense growth of data from the proliferation of Internet of Things (IoT) devices presents opportunities and challenges for privacy engineering. On the one hand, this data can be harnessed for personalized services, cost savings, and environmental benefits. On the other hand, (new) legislation must be complied with and privacy risks arise from collecting and processing of such data. Distributed privacy-preserving analytics offers a promising solution, providing insights while also protecting privacy. However, this approach has new challenges and risks, such as key management and confidentiality. When designing a data marketplace which offers distributed privacy-preserving analytics, the key management comes with different threats, which require a solution adapted to the distributed architecture.In this context, the paper presents a comprehensive, end-to-end secure system called MOZAIK for privacy-preserving data collection, analysis, and sharing. The article focuses on the key management aspect of the secure multi-party computation (MPC) component in a distributed privacy-preserving analytics architecture and the specific challenges created by introducing MPC. The proposed solution involves temporary storage of (symmetric) key shares and public-key encryption schemes to ensure secure key management for privacy-preserving computation. Our solution has the potential to be applied in other MPC-based setups, making it a valuable addition to the field of privacy engineering. By addressing key management challenges and risks, MOZAIK enhances data protection while enabling valuable insights from IoT data.
MOZAIK中多方计算的安全密钥管理
物联网(IoT)设备的激增带来了数据的巨大增长,为隐私工程带来了机遇和挑战。一方面,这些数据可以用于个性化服务、成本节约和环境效益。另一方面,必须遵守(新)法例,而收集及处理该等资料会带来私隐风险。分布式隐私保护分析提供了一个很有前途的解决方案,在提供见解的同时也保护了隐私。但是,这种方法有新的挑战和风险,例如密钥管理和机密性。在设计提供分布式隐私保护分析的数据市场时,密钥管理会带来不同的威胁,这需要适应分布式体系结构的解决方案。在这种情况下,本文提出了一个全面的端到端安全系统,称为MOZAIK,用于保护隐私的数据收集,分析和共享。本文重点关注分布式隐私保护分析体系结构中安全多方计算(MPC)组件的密钥管理方面,以及引入MPC所带来的具体挑战。所提出的解决方案涉及(对称)密钥共享的临时存储和公钥加密方案,以确保对隐私保护计算的安全密钥管理。我们的解决方案有潜力应用于其他基于mpc的设置,使其成为隐私工程领域的一个有价值的补充。通过解决关键的管理挑战和风险,MOZAIK增强了数据保护,同时从物联网数据中获得有价值的见解。
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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