基于聚类的入侵检测联邦学习框架

Luxin Cai, Naiyue Chen, Yuanmeng Wei, Huaping Chen, Yidong Li
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引用次数: 0

摘要

随着工业互联网的快速发展,网络入侵检测变得尤为重要。在工业互联网中,由于大量数据分布在边缘节点上,因此需要对各个边缘节点的网络入侵检测进行联合分析。联邦学习结构可以避免数据从本地节点流出,保护用户隐私数据。然而,每个边缘节点的数据分布是不同的,这限制了联邦学习模型的有效性。针对非iid数据特征,提出了一种新的基于聚类的网络入侵检测联邦学习框架。在该方法中,我们通过数据标签将客户端聚类到不同的社区中,其中客户端在同一社区中包含的数据标签比例相似。根据聚类结果,利用聚类内部和聚类之间的相似性,将联邦学习模型的聚类分解为聚类聚类和全局聚类。我们基于UNSW_NB15数据集进行了大量的实验。结果表明,该方法比fedag和FedProx具有更好的性能。在保证数据安全和隐私保护的前提下,可以很好地适应不同数据样本分布的场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster-based Federated Learning Framework for Intrusion Detection
With the rapid development of Industrial Internet, the network intrusion detection has become particularly important. In the Industrial Internet, large-scale data is distributed in the edge nodes caused the joint analysis of network intrusion detection at each edge node has become necessary. Federated learning structure can avoid data out of local nodes to protect user privacy data. However, the data distribution is different for each edge nodes, which limits the effectiveness of federated learning models. We focus on the non-IID data features and propose a new cluster-based federated learning framework for network intrusion detection. In this method, we cluster clients into different communities by data labels, which the clients contain the similar proportion of data labels in the same community. Based on the clustering results, we decompose federated learning model aggregation into cluster aggregation and global aggregation by leveraging similarities both within and between clusters. We conduct extensive experiments based on UNSW_NB15 dataset. The results show that our method has better performance than FedAvg and FedProx. It can work well in scenarios with different distributions of data samples while ensuring data security and privacy protection.
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