Federated Fuzzy Learning with Imbalanced Data

Lukas Johannes Dust, Marina López Murcia, Andreas Mäkilä, Petter Nordin, N. Xiong, Francisco Herrera
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引用次数: 3

Abstract

Federated learning (FL) is an emerging and privacy-preserving machine learning technique that is shown to be increasingly important in the digital age. The two challenging issues for FL are: (1) communication overhead between clients and the server, and (2) volatile distribution of training data such as class imbalance. The paper aims to tackle these two challenges with the proposal of a federated fuzzy learning algorithm (FFLA) that can be used for data-based construction of fuzzy classification models in a distributed setting. The proposed learning algorithm is fast and highly cheap in communication by requiring only two rounds of interplay between the server and clients. Moreover, FFLA is empowered with an an imbalance adaptation mechanism so that it remains robust against heterogeneous distributions of data and class imbalance. The efficacy of the proposed learning method has been verified by the simulation tests made on a set of balanced and imbalanced benchmark data sets.
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不平衡数据下的联邦模糊学习
联邦学习(FL)是一种新兴的保护隐私的机器学习技术,在数字时代越来越重要。FL的两个具有挑战性的问题是:(1)客户端和服务器之间的通信开销,(2)训练数据的不稳定分布,如类不平衡。为了解决这两个问题,本文提出了一种联邦模糊学习算法(FFLA),该算法可用于分布式环境下基于数据的模糊分类模型构建。所提出的学习算法在服务器和客户端之间只需要两轮交互,速度快,通信成本低。此外,FFLA被赋予了一个不平衡适应机制,因此它对数据的异构分布和类的不平衡保持健壮性。在一组平衡和不平衡基准数据集上进行了仿真测试,验证了所提学习方法的有效性。
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