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A Hybrid Intrusion Detection System Based on Scalable K-Means+ Random Forest and Deep Learning

机译:一种基于可扩展K-Means +随机林和深度学习的混合入侵检测系统

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摘要

Digital assets have come under various network security threats in the digital age. As a kind of security equipment to protect digital assets, intrusion detection system (IDS) is less efficient if the alert is not timely and IDS is useless if the accuracy cannot meet the requirements. Therefore, an intrusion detection model that combines machine learning with deep learning is proposed in this paper. The model uses the k-means and the random forest (RF) algorithms for the binary classification, and distributed computing of these algorithms is implemented on the Spark platform to quickly classify normal events and attack events. Then, by using the convolutional neural network (CNN), long short-term memory (LSTM), and other deep learning algorithms, the events judged as abnormal are further classified into different attack types finally. At this stage, adaptive synthetic sampling (ADASYN) is adopted to solve the unbalanced dataset. The NSL-KDD and CIS-IDS2017 datasets are used to evaluate the performance of the proposed model. The experimental results show that the proposed model has better TPR for most of attack events, faster data preprocessing speed, and potentially less training time. In particular, the accuracy of multi-target classification can reach as high as 85.24% in the NSL-KDD dataset and 99.91% in the CIC-IDS2017 dataset.
机译:数字资产已受到数字时代的各种网络安全威胁。作为一种安全设备来保护数字资产,入侵检测系统(IDS)是效率较低,如果报警不及时和IDS是无用的,如果精度不能满足要求。因此,入侵检测模型,结合机器学习与深学习本文提出。该模型采用k均值和二元分类随机森林(RF)算法,并分发这些算法计算是星火平台快速分类正常事件和攻击的事件上实现。然后,通过使用卷积神经网络(CNN),长短期记忆(LSTM)等深学习算法,判断为异常的事件被进一步分类成不同的攻击类型最后。在此阶段,自适应合成采样(ADASYN)采用解决不平衡数据集。在NSL-KDD和CIS-IDS2017数据集用于评估该模型的性能。实验结果表明,该模型对于大多数攻击事件的更好的TPR,更快的数据预处理的速度,并有可能减少培训时间。特别地,多目标分类的准确性可在NSL-KDD数据集和99.91%,在CIC-IDS2017数据集高达85.24%。

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