基于多指纹识别的机器学习SSH蜜罐识别

Yong-Jian Zhang, Wen-Jie Liu, Ke-Nan Guo, Yanyan Kang
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引用次数: 0

摘要

蜜罐是一种新型的主动防御技术,它通过构造可控的漏洞陷阱,诱骗攻击者发起入侵攻击,从而达到识别安全漏洞并提取攻击特征的目的。攻击者通常使用蜜罐识别技术绕过蜜罐,以隐藏其攻击策略。本文提出了一种基于多重指纹的SSH蜜罐检测与分类新方法。首先利用随机森林算法将目标样本分为疑似蜜罐和正常宿主,然后利用多指纹特征对疑似蜜罐进行分类。这种五行检测模型在提高蜜罐分类精度的同时,也减少了时间的浪费。最后,通过实验测量和与其他蜜罐识别方法的对比分析,本文方法显著提高了SSH蜜罐类型识别的准确性。它在蜜罐大规模目标ip的分类和检测方面也更加高效,通过搜索互联网可以找到大量真实的SSH蜜罐ip,然后对其进行进一步分析,获得其地理分布和存活率特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of SSH Honeypots Using Machine Learning Techniques Based on Multi-Fingerprinting
Honeypots-a new active defense technique-can accomplish the goal of identifying security vulnerabilities and extracting attack features by constructing controlled vulnerability traps and deceiving attackers into launching intrusion assaults. Attackers typically use honeypot identification techniques to go around honeypots in order to conceal their attack strategies. In this paper, we proposes a new method for detecting and classifying SSH honeypots based on multi-fingerprinting. Target samples are first classified into suspected honeypots and normal hosts using the Random Forest algorithm, and then suspected honeypots are classified using multi-fingerprint features. This five-element detection model can increase the accuracy of honeypot classification while also cutting down on wasted time. Finally, through experimental measurements and comparative analysis with the other method for identifying honeypot, the method in this paper significantly improves the accuracy of identifying SSH honeypot types. It is also more efficient in classifying and detecting large-scale target IPs for honeypots, and there are a lot of real SSH honeypot IPs that can be found by searching the Internet, which can then be further analyzed to obtain their geographical distribution and survival rate characteristics.
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