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Federated Learning with Mutually Cooperating Devices: A Consensus Approach Towards Server-Less Model Optimization

机译:相互协作的设备的联合学习:减少服务器模型优化的共识方法

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Federated learning (FL) is emerging as a new paradigm for training a machine learning model in cooperative networks. The model parameters are optimized collectively by large populations of interconnected devices, acting as cooperative learners that exchange local model updates with the server, rather than user data. The FL framework is however centralized, as it relies on the server for fusion of the model updates and as such it is limited by a single point of failure. In this paper we propose a distributed FL approach that performs a decentralized fusion of local model parameters by leveraging mutual cooperation between the devices and local (in-network) data operations via consensus-based methods. Communication with the server can be partially, or fully, replaced by in-network operations, scaling down the traffic load on the server as well as paving the way towards a fully serverless FL approach. This proposal also lays the groundwork for integration of FL methods within future (beyond 5G) wireless networks characterized by distributed and decentralized connectivity. The proposed algorithms are implemented and published as open source. They are also designed and verified by experimental data.
机译:联合学习(FL)成为一种在合作网络中训练机器学习模型的新范式。模型参数由大量相互连接的设备共同优化,充当与服务器(而非用户数据)交换本地模型更新的协作学习器。但是,FL框架是集中式的,因为它依赖于服务器来融合模型更新,因此受到单点故障的限制。在本文中,我们提出了一种分布式FL方法,该方法通过利用基于共识的方法利用设备和本地(网络内)数据操作之间的相互协作来执行局部模型参数的分散融合。与服务器的通信可以部分或完全由网络内操作代替,从而减少服务器上的流量负载,并为完全无服务器的FL方法铺平了道路。该提案还为将FL方法集成到以分布式和分散连接为特征的未来(5G以外)无线网络中奠定了基础。所提出的算法已实现并作为开源发布。它们还通过实验数据进行设计和验证。

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