分散环境下协同网络安全的联邦学习

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摘要

在分散的网络环境中,协作努力对于加强网络安全以抵御恶意行为者不断发展的威胁至关重要。联邦学习已经成为一种很有前途的解决方案,它使多个节点能够在保护数据隐私的同时共同训练机器学习模型。本研究提出了SentinelNet,这是一种专门为协作网络安全设计的新型联邦学习框架。该框架强调安全威胁情报共享、隐私保护技术和自适应学习机制。通过综合评估和实际案例研究,SentinelNet展示了其在增强网络安全的同时保持数据机密性的有效性。该研究强调了协作方法的重要性,并提倡采用联邦学习来强化分散的网络生态系统。
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Federated Learning for Collaborative Network Security in Decentralized Environments
In decentralized network environments, collaborative efforts are crucial to bolstering network security against everevolving threats from malicious actors. Federated Learning has emerged as a promising solution, enabling multiple nodes to collectively train machine learning models while preserving data privacy. This research proposes SentinelNet, a novel Federated Learning framework specifically designed for collaborative network security. The framework emphasizes secure threat intelligence sharing, privacy-preserving techniques, and adaptive learning mechanisms. Through comprehensive evaluations and real-world case studies, SentinelNet demonstrates its efficacy in enhancing network security while maintaining data confidentiality. The research highlights the significance of collaborative approaches and advocates the adoption of Federated Learning to fortify decentralized network ecosystems.
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