基于聚类方法的网络钓鱼邮件分析

I. R. A. Hamid, J. Abawajy
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引用次数: 22

摘要

本文提出了一种分析电子邮件网络钓鱼活动的方法。分析网络钓鱼活动对于确定个人或特定网络钓鱼者群体的活动非常有用。通过生成概要文件,可以很好地理解和观察网络钓鱼活动。通常,网络钓鱼领域的工作旨在检测网络钓鱼电子邮件,而我们则专注于分析网络钓鱼电子邮件。我们使用钓鱼邮件中的各种特征作为特征向量,将分析问题表述为聚类问题。此外,我们基于聚类预测生成概要文件。这些预测将进一步用于生成这些电子邮件的完整配置文件。早期聚类算法的性能对模型的有效性至关重要。我们通过将聚类方法纳入我们的模型,对许多分类算法的性能进行了实验评估。我们提出的分析电子邮件生成的网络钓鱼算法(ProEP)通过选择最佳簇数的RatioSize规则展示了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Profiling Phishing Email Based on Clustering Approach
In this paper, an approach for profiling email-born phishing activities is proposed. Profiling phishing activities are useful in determining the activity of an individual or a particular group of phishers. By generating profiles, phishing activities can be well understood and observed. Typically, work in the area of phishing is intended at detection of phishing emails, whereas we concentrate on profiling the phishing email. We formulate the profiling problem as a clustering problem using the various features in the phishing emails as feature vectors. Further, we generate profiles based on clustering predictions. These predictions are further utilized to generate complete profiles of these emails. The performance of the clustering algorithms at the earlier stage is crucial for the effectiveness of this model. We carried out an experimental evaluation to determine the performance of many classification algorithms by incorporating clustering approach in our model. Our proposed profiling email-born phishing algorithm (ProEP) demonstrates promising results with the RatioSize rules for selecting the optimal number of clusters.
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