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A Hierarchy Distributed-Agents Model for Network Risk Evaluation Based on Deep Learning

机译:基于深度学习的网络风险评估层次分布式代理模型

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摘要

Deep Learning presents a critical capability to be geared into environments being constantly changed and ongoing learning dynamic, which is especially relevant in Network Intrusion Detection. In this paper, as enlightened by the theory of Deep Learning Neural Networks, Hierarchy Distributed-Agents Model for Network Risk Evaluation, a newly developed model, is proposed. The architecture taken on by the distributed-agents model are given, as well as the approach of analyzing network intrusion detection using Deep Learning, the mechanism of sharing hyper-parameters to improve the efficiency of learning is presented, and the hierarchical evaluative framework for Network Risk Evaluation of the proposed model is built. Furthermore, to examine the proposed model, a series of experiments were conducted in terms of NSL-KDD datasets. The proposed model was able to differentiate between normal and abnormal network activities with an accuracy of 97.60% on NSL-KDD datasets. As the results acquired from the experiment indicate, the model developed in this paper is characterized by high-speed and high-accuracy processing which shall offer a preferable solution with regard to the Risk Evaluation in Network.
机译:深度学习呈现临时性能力,以不断改变和持续的学习动态,这在网络入侵检测中特别相关。在本文中,提出了由深度学习神经网络理论的启示,提出了一种新开发的模型的网络风险评估的层次分布式代理模型。给出了分布式代理模型所采用的架构,以及使用深度学习分析网络入侵检测的方法,介绍了共享超参数以提高学习效率的机制,以及网络的分层评估框架建立了拟议模型的风险评估。此外,为了检查所提出的模型,在NSL-KDD数据集方面进行了一系列实验。所提出的模型能够区分正常和异常的网络活动,在NSL-KDD数据集中的准确性为97.60%。由于从实验中获得的结果表明,本文开发的模型的特点是高速和高精度处理,应当在网络中的风险评估方面提供优选的解决方案。

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