Research on Intrusion Detection Algorithm Based on Optimized CNN-LSTM

J. Du, Yang Kai, Zhentao Huang, Lin Jiang, Huang Lei, Haixia Yu
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引用次数: 2

Abstract

With the development of computer network technology, network security has become more and more important, and intrusion detection has become an important means of network attack detection. In recent years, machine learning has played an irreplaceable role in many fields. In order to improve the accuracy of intrusion detection, many machine learning algorithms have been applied in intrusion detection models. Through the learning of training samples in KDDCUP99 intrusion data, this paper uses the relevant theory of neural network to construct an intrusion detection classification model based on optimized convolutional neural network and long short-term memory network, which is used to distinguish between normal state and various intrusion states. Convolutional neural networks, deep neural networks and traditional decision tree algorithms are compared in details in terms of accuracy and loss. The experimental results show that the prediction accuracy of the algorithm proposed in this paper is 0.972, and the test loss is 0.045, which effectively improves the classification accuracy of intrusion detection. Finally, the future development direction and prospects of the algorithm are prospected to further improve the security of computer networks.
基于优化CNN-LSTM的入侵检测算法研究
随着计算机网络技术的发展,网络安全变得越来越重要,入侵检测已成为网络攻击检测的重要手段。近年来,机器学习在许多领域发挥着不可替代的作用。为了提高入侵检测的准确性,许多机器学习算法被应用到入侵检测模型中。本文通过对KDDCUP99入侵数据中训练样本的学习,运用神经网络的相关理论,构建了基于优化卷积神经网络和长短期记忆网络的入侵检测分类模型,用于区分正常状态和各种入侵状态。比较了卷积神经网络、深度神经网络和传统决策树算法的准确率和损失。实验结果表明,本文提出的算法预测精度为0.972,测试损失为0.045,有效提高了入侵检测的分类精度。最后对算法未来的发展方向和前景进行了展望,以进一步提高计算机网络的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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