基于并行深度神经网络的信息通信系统计算机攻击检测

Vitaliy Dorosh, M. Komar, A. Sachenko, V. Golovko
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引用次数: 5

摘要

提出了一种深度神经网络并行化的方法,该方法将训练集划分为多个子集,并将每个子集训练成神经网络模型的独立副本,从而大大减少了训练时间,提高了攻击检测的可靠性。开发了Caffe框架中的神经网络结构,并进行了实验研究,表明与已知方法相比,检测攻击的可靠性有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel Deep Neural Network for Detecting Computer Attacks in Information Telecommunication Systems
The approach to parallelization of the deep neural network by dividing the training set into sub-set and training each sub-set into a separate copy of the model of the neural network, which allows to significantly reduce the training time and increase the reliability of the detection of attacks, is proposed. The structure of the neural network in the framework Caffe is developed, and experimental studies have been carried out that showed an increase in the reliability of the detection of attacks in comparison with known approaches.
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