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Identifying Email Threats Using Predictive Analysis

机译:使用预测分析识别电子邮件威胁

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摘要

Malicious emails pose substantial threats to businesses. Whether it is a malware attachment or a URL leading to malware, exploitation or phishing, attackers have been employing emails as an effective way to gain a foothold inside organizations of all kinds. To combat email threats, especially targeted attacks, traditional signature- and rule-based email filtering as well as advanced sandboxing technology both have their own weaknesses. In this paper, we propose a predictive analysis approach that learns the differences between legit and malicious emails through static analysis, creates a machine learning model and makes detection and prediction on unseen emails effectively and efficiently. By comparing three different machine learning algorithms, our preliminary evaluation reveals that a Random Forests model performs the best.
机译:恶意电子邮件对企业构成了实质性威胁。是否是恶意软件附件或导致恶意软件,剥削或网络钓鱼的URL,攻击者一直在使用电子邮件作为在各种组织内部获得立足点的有效方法。为了打击电子邮件威胁,特别是针对性攻击,传统的签名和规则的电子邮件过滤以及高级沙箱技术都有自己的弱点。在本文中,我们提出了一种预测性分析方法,通过静态分析来学习合法和恶意电子邮件的差异,创建机器学习模型,并有效且有效地对看不见的电子邮件进行检测和预测。通过比较三种不同的机器学习算法,我们的初步评价显示随机森林模型表现最佳。

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