一种使用攻击和集成学习的入侵检测模型

Lingfeng Qiu, Yafei Song
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引用次数: 0

摘要

网络入侵检测系统作为一种保护网络不受攻击的安全防御技术,在计算机系统和网络安全领域发挥着非常重要的作用。针对网络入侵检测中不平衡数据的多重分类问题,机器学习在入侵检测中得到了广泛的应用,它比传统的方法更加智能和准确。对现有的多种网络入侵检测分类方法进行了改进,提出了一种基于smote和集成学习的入侵检测模型。该模型主要分为两部分:smote过采样和堆叠分类器。本文使用NSL-KDD数据集对堆叠集成模型进行了测试。与其他五种基本学习器模型相比,堆叠集成具有更高的检测率。堆叠集成在解决不平衡网络入侵检测数据的多分类问题方面具有显著的优势。这是一种实用可行的入侵检测方法。
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An intrusion detection model using smote and ensemble learning
As a security defense technology to protect the network from attack, network intrusion detection system plays a very important role in the field of computer system and network security. Aiming at the multi classification problem of unbalanced data in network intrusion detection, machine learning has been widely used in intrusion detection, which is more intelligent and accurate than traditional methods. The existing multi classification methods of network intrusion detection are improved, and an intrusion detection model using smote and ensemble learning is proposed. The model is mainly divided into two parts: smote oversampling and stacking classifier. The NSL-KDD dataset is used to test the Stacked Ensemble model in this paper. Compared with the other five basic learner models, the Stacked Ensemble has a higher detection rate. Stacked Ensemble has significant advantages in solving the multi classification problem of unbalanced network intrusion detection data. It is a practical and feasible intrusion detection method.
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