使用机器学习和行为分析增强网络安全

M. G. Haricharan, S. Govind, C. Kumar
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引用次数: 0

摘要

多年来,随着互联网的进步,对互联网的攻击数量也有所增加。为了保证网络的安全,需要强大的入侵检测系统。开发了一种新的监督机器学习系统,用于对网络流量进行分类,无论其是恶意的还是良性的。为了找到考虑检测成功率的最佳模型,使用了监督学习算法和特征选择方法的结合。为了评估性能,使用NSL-KDD数据集使用支持向量机和人工神经网络监督机器学习技术对网络流量进行分类。对比研究表明,该模型在入侵检测成功率方面优于现有模型。机器学习(ML)算法经常用于设计有效的攻击检测(身份)结构,以便在主机和社区级别有效缓解和检测恶意网络威胁。因此,开发一种准确、合理的识别装置将是一个值得关注的问题。仿真结果表明,我们的预测对数据集的多次精度达到了97.52%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Enhanced Network Security using Machine Learning and Behavioral Analysis
With the advancement of the internet over the years, the number of attacks over the internet has also increased. A powerful intrusion detection system (IDS) is required to ensure the security of a network. A novel supervised machine learning system has been developed to classify network traffic, whether it is malicious or benign. To find the best model considering detection success rate, a combination of supervised learning algorithms and feature selection methods have been used. To evaluate the performance, the NSL-KDD dataset is used to classify network traffic using SVM and ANN supervised machine learning techniques. A comparative study shows that the proposed model is more efficient than other existing models with respect to intrusion detection success rate. Machine learning (ML) algorithms are frequently used to design effective attack detection (identity) structures for the effective mitigation and detection of malicious cyber threats at the host and community levels. Therefore, developing an accurate and sensible identification gadget will be a concern. The simulation results show that our projected achieving an excessive accuracy price of up to 97.52% for the dataset multiple times.
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