利用人工神经网络检测恶意网络活动

Q4 Engineering Advances in Military Technology Pub Date : 2023-04-27 DOI:10.3849/aimt.01794
M. Turcanik, J. Baráth
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引用次数: 1

摘要

本文提出了一种深度学习方法来检测计算机网络中的恶意通信。截取的通信被转换为行为特征向量,这些特征向量被减少(使用主成分分析和逐步选择方法)并归一化以创建训练集和测试集。然后使用前馈人工神经网络作为分类器来确定恶意通信的类型。使用三种训练算法来训练神经网络:Levenberg-Marquardt算法、贝叶斯正则化和缩放共轭梯度反向传播算法。在减小训练集和测试集的大小后,所提出的人工神经网络拓扑对每种类型的恶意通信实现了81.5%的正确分类概率,对正常通信实现了99.6%(甚至更好)的正确分类几率。
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Detection of Malicious Network Activity by Artificial Neural Network
This paper presents a deep learning approach to detect malicious communication in a computer network. The intercepted communication is transformed into behavioral feature vectors that are reduced (using principal component analysis and stepwise selection methods) and normalized to create training and test sets. A feed-forward artificial neural network is then used as a classifier to determine the type of malicious communication. Three training algorithms were used to train the neural network: the Levenberg-Marquardt algorithm, Bayesian regularization, and the scaled conjugate gradient backpropagation algorithm. The proposed artificial neural network topology after reducing the size of the training and test sets achieves a correct classification probability of 81.5 % for each type of malicious communication and of 99.6 % (and better) for normal communication.
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来源期刊
Advances in Military Technology
Advances in Military Technology Engineering-Civil and Structural Engineering
CiteScore
0.90
自引率
0.00%
发文量
11
审稿时长
12 weeks
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