基于进化的人脸识别联邦集成学习

Lin Li, Mai Li, Fang Qin, Weijia Zeng
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引用次数: 0

摘要

联邦学习作为一种分布式的机器学习训练框架,相对于传统的在单一、集中的数据集上进行训练,其在解决隐私、数据所有权、数据隔离等方面的优势越来越受欢迎。联邦学习框架面临的主要挑战之一是如何设计模型聚合,因为网络中的数据所有者可能具有不同的数据特征和通信延迟,从而降低训练效率甚至使训练无效。为了克服这些问题,我们提出了一种基于进化理论(EFEL)的新学习策略,在该策略中,我们维护一组多样化的模型,而不是单一的复杂模型,并允许它们独立进化。所提出的联邦集成学习框架在基准和现实数据库上进行了评估,在训练人脸识别的最先进模型方面取得了比fedag和FedFS更好的结果
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Evolutionary-based Federated Ensemble Learning on Face Recognition
Federated learning, as a distributed training framework of machine learning compared to the traditional training on a single, centralized dataset has been increasingly popular with advantages of addressing privacy, data ownership, data isolation and so on. One of the major challenges of federated learning framework is how to design model aggregation as data owners in the network may be different in data characteristics and communication delay which deceases training efficiency or even make the training invalid. To overcome these issues, we proposed a novel learning strategy based on evolutionary theory (EFEL) where we maintain a group of diversified models rather than a single, complex model and allow them to evolve independently. The proposed federated ensemble learning framework is evaluated on both benchmark and real-world databases and achieves better results than FedAvg and FedFS to train the state the art models in face recognition1
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