Federated learning is a new learning paradigm that decouples data collection and model training via multi-party computation and model aggregation. As a flexible learning setting, federated learning has the potential to integrate with other learning frameworks. We conduct a focused survey of federated learning in conjunction with other learning algorithms. Specifically, we explore various learning algorithms to improve the vanilla federated averaging algorithm and review model fusion methods such as adaptive aggregation, regularization, clustered methods, and Bayesian methods. Following the emerging trends, we also discuss federated learning in the intersection with other learning paradigms, termed as federated x learning, where x includes multitask learning, meta-learning, transfer learning, unsupervised learning, and reinforcement learning. This survey reviews the state of the art, challenges, and future directions.
翻译:联邦学习是一种新的学习模式,它通过多党计算和模式汇总,将数据收集和模式培训脱钩。作为一个灵活的学习环境,联邦学习具有与其他学习框架相结合的潜力。我们结合其他学习算法,对联邦学习进行重点调查。具体地说,我们探索各种学习算法,以改进香草联邦平均算法,并审查模式融合方法,如适应性汇总、正规化、集群方法和巴伊西亚方法。在出现新趋势之后,我们还讨论与其他学习模式(称为Federated x Learning)交融的联结学习,其中x包括多任务学习、元学习、转移学习、不受监督的学习和加强学习。本调查审视了艺术、挑战和未来方向的状况。