高频叠加点垂直扫描行为分析

Wenxian Guo, Haiqing Yu, Wei Ding
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引用次数: 0

摘要

接入superpoint是指在网络中与大量对等体同时通信,占用大量网络通信资源的主机。在接入叠加点检测算法发展相对成熟的背景下,基于此的异常检测研究是目前值得探索的方向。按时间划分,接入超点可分为高频、中频和低频超点。其中,高频点往往蕴含着重要的数据资源,是黑客攻击的首选,而垂直扫描则是攻击者常用的预入侵方法。因此,检测和分析高频超点的垂直扫描行为对高频超点的保护具有重要意义。对检测到的接入点定义了时频属性,提出了一种基于滑动窗口的时频分类算法。实验结果表明,该算法在高速网络环境下具有高达98.26%的准确率。根据规则对垂直扫描行为进行筛选。使用XGBoost算法生成分类器,该分类器可以区分垂直扫描引起的高频叠加点的异常行为。该分类器可以识别垂直扫描引起的高频叠加点异常行为,准确率为93.19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vertical Scanning Behavior Analysis of High-Frequency Superpoints
Access superpoint is a host that communicates with a large number of peers at the same time in the network, occupying a large number of network communication resources. Under the background that access superpoint detection algorithms have been developed relatively mature, the anomaly detection research based on this is the direction worth exploring at present. In terms of time, access superpoints can be divided into high-frequency, medium-frequency and low-frequency superpoints. Among them, high-frequency superpoints often contain important data resources and are the first choice for hackers to attack, while vertical scanning is a common pre-invasion method for attackers. Therefore, detecting and analyzing the vertical scanning behavior of high-frequency superpoints plays an important role in the protection of high-frequency superpoints. In this paper, a time-frequency attribute is defined for the detected access superpoints and a time-frequency classification algorithm based on sliding window is proposed. The experimental results show that the algorithm has a high accuracy of 98.26% in a high-speed network environment. The vertical scanning behavior was screened based on the rules. And XGBoost algorithm was used to generate a classifier that can distinguish the abnormal behaviors of high frequency superpoints caused by vertical scanning. The classifier can identify the abnormal behaviors of high frequency superpoints caused by vertical scanning with an accuracy of 93.19%.
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