An Effective RF-based Intrusion Detection Algorithm with Feature Reduction and Transformation

Jinxia Wei, Chun Long, Wei Wan, Yurou Zhang, Jing Zhao, Guanyao Du
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引用次数: 2

Abstract

Intrusion detection systems are essential in the field of network security. To improve the performance of detection model, many machine learning algorithms have been applied to intrusion detection models. Higher-quality data is critical to the accuracy of detection model and could greatly improve the performance. In this paper, an effective random forest-based intrusion detection algorithm with feature reduction and transformation is proposed. Specifically, we implement the correlation analysis and logarithm marginal density ratio to reduce and strengthen the original features respectively, which can greatly improve accuracy rate of classifier. The proposed classification system was deployed on NSL-KDD dataset. The experimental results show that this paper achieves better results than other related methods in terms of false alarm rate, accuracy, detection rate and running time.
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一种有效的基于射频特征约简和变换的入侵检测算法
入侵检测系统是网络安全领域的重要组成部分。为了提高入侵检测模型的性能,许多机器学习算法被应用到入侵检测模型中。高质量的数据对检测模型的准确性至关重要,可以大大提高检测模型的性能。本文提出了一种有效的基于随机森林的特征约简和变换入侵检测算法。具体来说,我们分别通过相关分析和对数边际密度比对原始特征进行约化和强化,可以大大提高分类器的准确率。将该分类系统部署在NSL-KDD数据集上。实验结果表明,本文在虚警率、准确率、检测率和运行时间等方面均优于其他相关方法。
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