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Pencil: Private and Extensible Collaborative Learning without the Non-Colluding Assumption
March 19, 2024, 4:43 a.m. | Xuanqi Liu, Zhuotao Liu, Qi Li, Ke Xu, Mingwei Xu
cs.LG updates on arXiv.org arxiv.org
Abstract: The escalating focus on data privacy poses significant challenges for collaborative neural network training, where data ownership and model training/deployment responsibilities reside with distinct entities. Our community has made substantial contributions to addressing this challenge, proposing various approaches such as federated learning (FL) and privacy-preserving machine learning based on cryptographic constructs like homomorphic encryption (HE) and secure multiparty computation (MPC). However, FL completely overlooks model privacy, and HE has limited extensibility (confined to only one …
abstract arxiv challenge challenges collaborative community cs.cr cs.lg data data privacy deployment federated learning focus network network training neural network ownership privacy responsibilities training type
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