Federated learning (FL) is an emerging paradigm of collaborative machine learning that preserves user privacy while building powerful models. Nevertheless, due to the nature of open participation by self-interested entities, it needs to guard against potential misbehaviours by legitimate FL participants. FL verification techniques are promising solutions for this problem. They have been shown to effectively enhance the reliability of FL networks and help build trust among participants. Verifiable federated learning has become an emerging topic of research that has attracted significant interest from the academia and the industry alike. Currently, there is no comprehensive survey on the field of verifiable federated learning, which is interdisciplinary in nature and can be challenging for researchers to enter into. In this paper, we bridge this gap by reviewing works focusing on verifiable FL. We propose a novel taxonomy for verifiable FL covering both centralised and decentralised FL settings, summarise the commonly adopted performance evaluation approaches, and discuss promising directions towards a versatile verifiable FL framework.
翻译:联邦学习(FL)是合作机器学习的新兴范例,它既保护用户隐私,又建立强有力的模式,然而,由于自我利益实体公开参与的性质,它需要防止合法的FL参与者可能犯的错误行为。FL核查技术是解决这一问题的有希望的办法。事实证明,FL核查技术有效地提高了FL网络的可靠性,有助于建立参与者之间的信任。可核查的联邦学习已成为研究的新兴课题,吸引了学术界和业界的极大兴趣。目前,没有全面调查可核查的联邦化学习领域,这是跨学科的,对研究人员来说具有挑战性。在本文件中,我们通过审查以可核查的FL为重点的工作来弥补这一差距。我们建议对可核查的FL进行新的分类,涵盖集中和分散的FL环境,总结共同采用的业绩评价方法,并讨论走向多功能、可核查的FL框架的有希望的方向。