As next-generation networks materialize, increasing levels of intelligence are required. Federated Learning has been identified as a key enabling technology of intelligent and distributed networks; however, it is prone to concept drift as with any machine learning application. Concept drift directly affects the model's performance and can result in severe consequences considering the critical and emergency services provided by modern networks. To mitigate the adverse effects of drift, this paper proposes a concept drift detection system leveraging the federated learning updates provided at each iteration of the federated training process. Using dimensionality reduction and clustering techniques, a framework that isolates the system's drifted nodes is presented through experiments using an Intelligent Transportation System as a use case. The presented work demonstrates that the proposed framework is able to detect drifted nodes in a variety of non-iid scenarios at different stages of drift and different levels of system exposure.
翻译:随着下一代网络的出现,需要增加情报水平; 联邦学习被确定为智能和分布式网络的关键赋能技术; 但是,它很容易像任何机器学习应用一样被概念转移; 概念的转移直接影响模型的性能,并且考虑到现代网络提供的关键和紧急服务,可能产生严重后果; 为了减轻漂移的不利影响,本文件提议采用概念漂移探测系统,利用在联合培训过程的每一次迭代提供的联合学习更新; 使用维度减少和集群技术,通过使用智能运输系统进行实验,提出一个孤立系统漂移节点的框架,作为使用的一个实例; 所述工作表明,拟议的框架能够在漂移的不同阶段和系统接触的不同程度,在各种非二种情景中探测漂移节点。