通过数据去中心化保护隐私的人工智能服务

Christian Meurisch, Bekir Bayrak, M. Mühlhäuser
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引用次数: 19

摘要

用户服务越来越多地基于人工智能模型,例如提供个性化和主动支持。然而,底层的人工智能算法需要连续的个人数据流——这导致了隐私问题,因为用户通常必须在自己的领域之外共享这些数据。目前的隐私保护概念要么不适用于这种基于人工智能的服务,要么对任何一方都不利。本文介绍了PrivAI,这是一个新的分散和隐私设计平台,用于克服共享用户数据的需求,从而从个性化人工智能服务中受益。简而言之,PrivAI补充了现有的个人数据存储方法,但严格执行对原始用户数据的限制。PrivAI进一步解决了由此带来的挑战:(1)将人工智能算法分为基于云的通用模型训练、随后的本地个性化和基于社区的新用户模型更新共享;通过(2)将机密AI模型加载到可信的执行环境中,从而保护提供商的知识产权(IP)。我们的实验证明了PrivAI的可行性和有效性,其性能与目前实践的方法相当。
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Privacy-preserving AI Services Through Data Decentralization
User services increasingly base their actions on AI models, e.g., to offer personalized and proactive support. However, the underlying AI algorithms require a continuous stream of personal data—leading to privacy issues, as users typically have to share this data out of their territory. Current privacy-preserving concepts are either not applicable to such AI-based services or to the disadvantage of any party. This paper presents PrivAI, a new decentralized and privacy-by-design platform for overcoming the need for sharing user data to benefit from personalized AI services. In short, PrivAI complements existing approaches to personal data stores, but strictly enforces the confinement of raw user data. PrivAI further addresses the resulting challenges by (1) dividing AI algorithms into cloud-based general model training, subsequent local personalization, and community-based sharing of model updates for new users; by (2) loading confidential AI models into a trusted execution environment, and thus, protecting provider’s intellectual property (IP). Our experiments show the feasibility and effectiveness of PrivAI with comparable performance as currently-practiced approaches.
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