基于DBSCAN聚类算法的异常检测方法研究

Dingsheng Deng
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引用次数: 8

摘要

随着互联网技术和通信技术的飞速发展,越来越多的计算机系统和网络受到入侵者的恶意攻击。网络安全在一定程度上受到了严重的威胁,网络安全技术也越来越受到公众的重视。入侵检测技术作为一种主动监控网络数据的安全防护技术,有效地弥补了防火墙、数据加密等传统安全防护技术的缺陷,成为网络安全领域的一个重要研究领域。基于此,设计系统的安全机制,防止对系统资源和数据的非法访问就显得尤为重要。本文采用DBSCAN算法进行异常检测聚类算法。能够对海量数据进行处理的算法已成为异常检测领域的研究热点。在审计记录上形成正常的行为概况,并在程序行为发生变化时及时调整。实验结果表明,与其他算法相比,基于DBSCAN算法的异常检测可以提高数据集的检测率,显著提高异常检测的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Anomaly Detection Method Based on DBSCAN Clustering Algorithm
With the rapid development of Internet technology and communication technology, more and more computer systems and networks have been maliciously attacked by intruders. Network security has been seriously threatened to a certain extent, and network security technology has also attracted more and more attention from the public. As a security protection technology for actively monitoring network data, intrusion detection technology effectively compensates for the defects of traditional security protection technologies such as firewalls and data encryption, and has become an important research field in network security. Based on this, it is very important to design the security mechanism of the system to prevent unauthorized access to system resources and data. This paper uses a DBSCAN algorithm for anomaly detection clustering algorithm. Algorithms that can be used for massive data processing have become a research hotspot in anomaly detection. Normal behavior profiles are formed on audit records and adjusted in time as program behavior changes. Experimental results show that, compared with other algorithms, anomaly detection based on the DBSCAN algorithm can improve the detection rate of the data set, and significantly improve the accuracy of anomaly detection.
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