Federated machine learning (FL) allows to collectively train models on sensitive data as only the clients' models and not their training data need to be shared. However, despite the attention that research on FL has drawn, the concept still lacks broad adoption in practice. One of the key reasons is the great challenge to implement FL systems that simultaneously achieve fairness, integrity, and privacy preservation for all participating clients. To contribute to solving this issue, our paper suggests a FL system that incorporates blockchain technology, local differential privacy, and zero-knowledge proofs. Our implementation of a proof-of-concept with multiple linear regression illustrates that these state-of-the-art technologies can be combined to a FL system that aligns economic incentives, trust, and confidentiality requirements in a scalable and transparent system.
翻译:联邦机器学习(FL)允许集体培训敏感数据模型,作为客户的模型,而不是其培训数据需要共享;然而,尽管对FL的研究已经引起注意,但这一概念在实践中仍然没有得到广泛采用;一个主要原因是,要同时实现所有参与客户的公平、完整和隐私保护的FL系统,面临着巨大的挑战;为了帮助解决这一问题,我们的论文建议建立一个FL系统,其中包含链链技术、地方差异隐私和零知识证明。 我们采用多重线性回归的验证概念表明,这些最先进的技术可以与在可扩展和透明的系统中将经济激励、信任和保密要求结合起来的FL系统相结合。