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Intrusion Detection Using Convolutional Neural Networks for Representation Learning

机译:利用卷积神经网络进行意识学习的入侵检测

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The intrusion detection based on deep learning method has been widely attempted for representation learning. However, in various deep learning models for intrusion detection, there is rarely convolutional neural networks (CNN) model. In this work, we propose a image conversion method of NSL-KDD data. Convolutional neural networks automatically learn the features of graphic NSL-KDD transformation via the proposed graphic conversion technique. We evaluate the performance of the image conversion method by binary class classification experiments with NSL-KDD Test~+ and Test~(-21). Different structures of CNN are testified for comparison. On the two NSL-KDD test datasets, CNN performed better than most standard classifier although the CNN did not improve state of the art completely. Results show that the CNN model is sensitive to image conversion of attack data and our proposed method can be used for intrusion detection.
机译:基于深度学习方法的入侵检测已被广泛尝试了代表学习。然而,在用于入侵检测的各种深度学习模型中,很少有卷积神经网络(CNN)模型。在这项工作中,我们提出了NSL-KDD数据的图像转换方法。卷积神经网络通过所提出的图形转换技术自动学习图形NSL-KDD转换的特征。通过NSL-KDD测试〜+和测试〜(-21)评估模型类分类实验的图像转换方法的性能。 CNN的不同结构被证明以进行比较。在两个NSL-KDD测试数据集上,CNN比大多数标准分类器更好地执行,尽管CNN没有完全改善本领域的状态。结果表明,CNN模型对攻击数据的图像转换敏感,我们所提出的方法可用于入侵检测。

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