cs.AI updates on arXiv.org 10月02日
可验证联邦学习:veriFUL框架与挑战
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本文探讨了联邦学习中的数据隐私问题,提出veriFUL框架以实现可验证的联邦学习,确保数据影响被可靠移除,并针对高度监管和敏感领域提出挑战与潜在应用。

arXiv:2510.00833v1 Announce Type: cross Abstract: Federated unlearning (FUL) enables removing the data influence from the model trained across distributed clients, upholding the right to be forgotten as mandated by privacy regulations. FUL facilitates a value exchange where clients gain privacy-preserving control over their data contributions, while service providers leverage decentralized computing and data freshness. However, this entire proposition is undermined because clients have no reliable way to verify that their data influence has been provably removed, as current metrics and simple notifications offer insufficient assurance. We envision unlearning verification becoming a pivotal and trust-by-design part of the FUL life-cycle development, essential for highly regulated and data-sensitive services and applications like healthcare. This article introduces veriFUL, a reference framework for verifiable FUL that formalizes verification entities, goals, approaches, and metrics. Specifically, we consolidate existing efforts and contribute new insights, concepts, and metrics to this domain. Finally, we highlight research challenges and identify potential applications and developments for verifiable FUL and veriFUL.

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联邦学习 数据隐私 veriFUL框架 可验证性 高度监管
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