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Distinguishing between Web Attacks and Vulnerability Scans Based on Behavioral Characteristics

机译:基于行为特征的网络攻击和漏洞扫描区分

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The number of vulnerabilities and reported attacks on Web systems are showing increasing trends, which clearly illustrate the need for better understanding of malicious cyber activities. In this paper we use clustering to classify attacker activities aimed at Web systems. The empirical analysis is based on four datasets, each in duration of several months, collected by high-interaction honey pots. The results show that behavioral clustering analysis can be used to distinguish between attack sessions and vulnerability scan sessions. However, the performance heavily depends on the dataset. Furthermore, the results show that attacks differ from vulnerability scans in a small number of features (i.e., session characteristics). Specifically, for each dataset, the best feature selection method (in terms of the high probability of detection and low probability of false alarm) selects only three features and results into three to four clusters, significantly improving the performance of clustering compared to the case when all features are used. The best subset of features and the extent of the improvement, however, also depend on the dataset.
机译:漏洞的数量和报告对Web系统的攻击正在显示出越来越多的趋势,这清楚地说明了更好地理解恶意网络活动。在本文中,我们使用群集来对旨在Web系统的攻击活动进行分类。经验分析基于四个数据集,每个数据集在几个月内,由高互动蜂蜜盆收集。结果表明,行为聚类分析可用于区分攻击会话和漏洞扫描会话。但是,该性能大量取决于数据集。此外,结果表明,攻击与少量特征中的漏洞扫描不同(即,会话特征)不同。具体地,对于每个数据集,最好的特征选择方法(根据误报的高概率和低概率)只选择三到四个集群,显着提高与案例相比的群集性能。所有功能都使用。然而,最佳特征子集和改进程度也取决于数据集。

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