基于密度的网络机器人聚类检测方法

M. Zabihi, M. V. Jahan, J. Hamidzadeh
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引用次数: 18

摘要

人类与网络机器人的区别,在计算机网络安全方面,导致了机器人检测问题。针对此问题的精确解决方案可以保护Web站点免受恶意机器人的入侵,并通过优先考虑人类用户来提高Web服务器的性能。在本文中,我们提出了一种基于密度的方法,称为DBC_WRD(基于密度的Web机器人检测聚类),用于在两个大型真实数据集上发现Web机器人的流量。因此,我们将游客作为空间实例,并引入两个新的特征来描述和区分他们。这些属性基于Web访问者的行为模式,并且随着时间的推移保持不变。针对DBSCAN作为本文使用的基于密度的聚类算法的一个缺点,我们只利用了4个特征来降维。根据监督评价,DBC_WRD可以达到96%的Jaccard度量,并产生两个熵和纯度分别为0.0215和0.97的聚类。此外,比较表明,从聚类质量和准确性的角度来看,DBC_WRD比最先进的算法表现得更好。最后,可以得出结论,一些非恶意的流行网络机器人,通过模仿人类的行为,使其难以被识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A density based clustering approach for web robot detection
Distinction between humans and Web robots, in terms of computer network security, has led to the robot detection problem. An exact solution for this issue can preserve Web sites from the intrusion of malicious robots and increase the performance of Web servers by prioritizing human users. In this article, we propose a density based method called DBC_WRD (Density Based Clustering for Web Robot Detection) to discover the traffic of Web robots on two large real data sets. So, we assume the visitors as the spatial instances and introduce two new features to describe and distinguish them. These attributes are based on the behavioral patterns of Web visitors and remain invariant over time. By focusing on one of the disadvantages of DBSCAN as the density based clustering algorithm used in this paper, we just utilize 4 features to reduce the dimensions. According to the supervised evaluations, DBC_WRD can have the 96% of Jaccard metric and produce two clusters which have the entropy and purity rates of 0.0215 and 0.97, respectively. Furthermore, the comparisons show that from the standpoint of clustering quality and accuracy, DBC_WRD performs better than state-of-the-art algorithms. Finally, it can be concluded that some non-malicious popular Web robots, through imitating the human's behavior, make it difficult to be identified.
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