An Unsupervised Network Anomaly Detection Model and Implementation

Yingdan Zhang, Kun Wen, Xingyu Wang
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引用次数: 0

Abstract

Anomaly detection for network attacks has always been a very important part of intrusion detection. The current research focus is anomaly detection based on deep learning, which has two main problems. One is the lack of a large amount of labeled data in model training, and the other is difficult to detect unknown network attacks or variant attacks. To solve the above problems, an unsupervised anomaly detection model is constructed in this paper. The automatic encoder is used to learn normal traffic characteristics and detect abnormal traffic. Meanwhile, time correlation features and hierarchical clustering algorithm are used for data preprocessing to reduce time and space complexity, so as to further improve the efficiency of model detection. Due to the serious lack of verification data sets for unsupervised anomaly detection, this paper collects and organizes a large amount of data and designs four types of network attack data, including new attack means, worms, system vulnerabilities and botnets. The experimental results showed that the detection accuracy of worms and system vulnerabilities reached 98%, the detection accuracy of botnets reached 89%, and the attacks of the new OriginLogger software were detected.
一种无监督网络异常检测模型与实现
网络攻击异常检测一直是入侵检测的重要组成部分。目前的研究重点是基于深度学习的异常检测,主要存在两个问题。一是模型训练中缺乏大量的标记数据,二是难以检测未知网络攻击或变体攻击。为了解决上述问题,本文构建了一种无监督异常检测模型。自动编码器用于学习正常流量特征和检测异常流量。同时,利用时间相关特征和分层聚类算法对数据进行预处理,降低时间和空间复杂度,进一步提高模型检测效率。由于严重缺乏无监督异常检测的验证数据集,本文收集并整理了大量数据,设计了新型攻击手段、蠕虫、系统漏洞和僵尸网络四类网络攻击数据。实验结果表明,对蠕虫和系统漏洞的检测准确率达到98%,对僵尸网络的检测准确率达到89%,检测出了新型OriginLogger软件的攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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