Convolutional Neural Networks with LSTM for Intrusion Detection

M. Ahsan, K. Nygard
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引用次数: 29

Abstract

A variety of attacks are regularly attempted at network infrastructure. With the increasing development of artificial intelligence algorithms, it has become effective to prevent network intrusion for more than two decades. Deep learning methods can achieve high accuracy with a low false alarm rate to detect network intrusions. A novel approach using a hybrid algorithm of Convolutional Neural Network (CNN) and Long Short Term Memory (LSTM) is introduced in this paper to provide improved intrusion detection. This bidirectional algorithm showed the highest known accuracy of 99.70% on a standard dataset known as NSL KDD. The performance of this algorithm is measured using precision, false positive, F1 score, and recall which found promising for deployment on live network infrastructure.
基于LSTM的卷积神经网络入侵检测
网络基础设施经常遭到各种各样的攻击。随着人工智能算法的不断发展,二十多年来,人工智能在防止网络入侵方面已经成为一种有效的方法。深度学习方法检测网络入侵的准确率高,虚警率低。本文提出了一种基于卷积神经网络(CNN)和长短期记忆(LSTM)混合算法的入侵检测方法。这种双向算法在被称为NSL KDD的标准数据集上显示出99.70%的最高已知准确率。该算法的性能是通过精度、假阳性、F1分数和召回率来衡量的,这些指标被认为有希望在实时网络基础设施上部署。
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