When the federated learning is adopted among competitive agents with siloed datasets, agents are self-interested and participate only if they are fairly rewarded. To encourage the application of federated learning, this paper employs a management strategy, i.e., more contributions should lead to more rewards. We propose a novel hierarchically fair federated learning (HFFL) framework. Under this framework, agents are rewarded in proportion to their pre-negotiated contribution levels. HFFL+ extends this to incorporate heterogeneous models. Theoretical analysis and empirical evaluation on several datasets confirm the efficacy of our frameworks in upholding fairness and thus facilitating federated learning in the competitive settings.
翻译:当联合学习在拥有分散数据集的竞争代理机构中采用时,代理机构只有得到公平的奖励,才具有自我利益和参与权。为鼓励应用联合学习,本文件采用管理战略,即更多的捐款应带来更多的回报。我们提议了一个等级上公平的新型联邦学习框架。在这个框架下,代理机构得到与其预先谈判的捐款水平相称的奖赏。HFFL+将这一奖赏扩大到包括多种模式。对若干数据集的理论分析和经验评估证实了我们框架在维护公平,从而便利在竞争环境中的联邦学习方面的效力。