基于主成分分析发现和预测指纹攻击的威胁感知蜜罐

N. Naik, Paul Jenkins, N. Savage
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引用次数: 12

摘要

网络攻击的扩散,其复杂性的增加,因此其解决方案,已经引起了网络安全行业的重大关注。蜜罐是一种流行的隐藏工具,用于诱使攻击者泄露自己的信息。在不暴露身份的情况下,指纹识别是一种有效的工具,但是成功的指纹攻击可以暴露蜜罐的身份;这可能导致毁灭性的后果,因此必须尽早发现这种指纹。有几种有效的方法可以防止指纹攻击;因此,迫切需要一种实时预测方法。不幸的是,没有技术可以实时发现和预测指纹攻击,因为很难将这种攻击与其他攻击隔离开来。为此,本文提出了一种利用主成分分析(PCA)实时发现和预测蜜罐指纹攻击的方法。由于每次指纹攻击都需要一系列操作来收集足够的信息以生成指纹,因此本文提出的技术利用了这一需求来收集其症状。分析了指纹攻击模拟过程中采集到的TCP、UDP和ICMP报文的几种属性异常,并结合流行的攻击技术和经验证据对其进行了评估。根据前文的分析,选取多个目标属性,通过PCA建立最具影响力的属性,从而准确发现和预测指纹攻击。最后,提出了一个预测蜜罐指纹攻击严重程度的通用模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threat-Aware Honeypot for Discovering and Predicting Fingerprinting Attacks Using Principal Components Analysis
The proliferation of cyberattacks, their increase in complexity and therefore their resolution, has resulted in significant concern within the cybersecurity industry. A honeypot is a popular concealed tool used to entice attackers to disclose information about themselves. It is an effective tool provided that its identity is not revealed, however, a successful fingerprinting attack can reveal the honeypots identity; leading to possible devastating consequences, resulting in the imperative to detect such fingerprinting at the earliest opportunity. Several effective methods are available to prevent a fingerprinting attack; therefore, a real-time prediction method is highly desirable. Unfortunately, no technique is available to discover and predict a fingerprinting attack in real-time as it is difficult to isolate that attack from other attacks. Therefore, this paper proposes a technique to discover and predict fingerprinting attacks on the honeypot in real-time by using a Principal Components Analysis (PCA). As every fingerprinting attack requires a sequence of actions to collect sufficient information to generate a fingerprint, this proposed technique takes advantage of this requirement to gather its symptoms. Analysing several abnormalities in attributes of TCP, UDP and ICMP packets collected during the simulation of fingerprinting attacks, evaluating them based on popular attack techniques and empirical evidence. After selecting several targeted attributes based on the previous analysis, it performs a PCA to establish the most influential attributes by which a fingerprinting attack can be discovered and predicted accurately. Finally, it proposes a general model to predict the severity level of the fingerprinting attack on the honeypot.
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