联邦模拟退火技术在协同环境下加速入侵检测

H. N. C. Neto, Ivana Dusparic, D. M. F. Mattos, N. Fernandes
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引用次数: 5

摘要

快速识别新的网络攻击模式对于提高网络安全至关重要。然而,在异构网络中识别正在进行的攻击是一项非常重要的任务。联邦学习是入侵检测系统(IDS)协作训练的一种解决方案。基于联邦学习的IDS使用联邦参与者提供的本地机器学习模型训练全局模型,而不共享本地数据。然而,优化挑战是联邦学习固有的。本文提出了联邦模拟退火(federacy退火,federsa)的元启发式方法来选择联邦学习中每个聚合轮的超参数和参与者子集。FedSA优化了与全局模型收敛相关的超参数。该方案减少了聚合轮数,加快了收敛速度。因此,federsa加速了从本地模型的学习提取,需要更少的IDS更新。提案评估表明,FedSA全球模型在不到10轮通信中收敛。与传统的聚合方法相比,该提议需要最多减少50%的聚合轮数来实现大约97%的攻击检测准确率。
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FedSA: Accelerating Intrusion Detection in Collaborative Environments with Federated Simulated Annealing
Fast identification of new network attack patterns is crucial for improving network security. Nevertheless, identifying an ongoing attack in a heterogeneous network is a non-trivial task. Federated learning emerges as a solution to collaborative training for an Intrusion Detection System (IDS). The federated learning-based IDS trains a global model using local machine learning models provided by federated participants without sharing local data. However, optimization challenges are intrinsic to federated learning. This paper proposes the Federated Simulated Annealing (FedSA) metaheuristic to select the hyperparameters and a subset of participants for each aggregation round in federated learning. FedSA optimizes hyperparameters linked to the global model convergence. The proposal reduces aggregation rounds and speeds up convergence. Thus, FedSA accelerates learning extraction from local models, requiring fewer IDS updates. The proposal assessment shows that the FedSA global model converges in less than ten communication rounds. The proposal requires up to 50% fewer aggregation rounds to achieve approximately 97% accuracy in attack detection than the conventional aggregation approach.
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