Federated learning (FL) is a machine learning technique that enables participants to collaboratively train high-quality models without exchanging their private data. Participants utilizing cross-silo federated learning (CS-FL) settings are independent organizations with different task needs, and they are concerned not only with data privacy but also with independently training their unique models due to intellectual property considerations. Most existing FL methods are incapable of satisfying the above scenarios. In this study, we present a novel federated learning method CoFED based on unlabeled data pseudolabeling via a process known as cotraining. CoFED is a federated learning method that is compatible with heterogeneous models, tasks, and training processes. The experimental results suggest that the proposed method outperforms competing ones. This is especially true for non-independent and identically distributed settings and heterogeneous models, where the proposed method achieves a 35% performance improvement.
翻译:联邦学习(FL)是一种机器学习技术,使参与者能够在不交换私人数据的情况下合作培训高质量的模型。使用跨筒式联合学习(CS-FL)设置的参与者是任务需求不同的独立组织,他们不仅关心数据隐私,还关心由于知识产权方面的考虑而独立培训其独特的模型。大多数现有的FL方法都无法满足上述设想。在这个研究中,我们提出了一个新型的联邦学习方法CoFED, 其基础是通过被称为共同培训的过程进行未贴标签的数据假标签。CFED是一种与多种模式、任务和培训过程兼容的联结式学习方法。实验结果表明,拟议的方法优于相互竞争的方法。对于非独立和分布相同的环境和多种模式尤其如此,因为拟议的方法在其中实现了35%的性能改进。