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Detecting Methods of Virus Email Based on Mail Header and Encoding Anomaly

机译:基于邮件头和编码异常的病毒邮件检测方法

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In this paper, we try to develop a machine learning-based virus email detection method. The key feature of this paper is employing Mail Header and Encoding Anomaly(MHEA) [1]. MHEA is capable to distinguish virus emails from normal emails, and is composed of only 5 variables, which are obtained from particular email header fields. Generating signature from MHEA is easier than generating signature by analyzing a virus code, therefore, we feature MHEA as signature to distinguish virus emails. At first, we refine the element of MHEA by association analysis with our email dataset which is composed of 4,130 virus emails and 2,508 normal emails. The results indicate that the one element of MHEA should not be used to generate MHEA. Next, we explore a way to apply MHEA into detection methods against virus emails. Our proposed method is a hybrid of matching signature from MHEA(signature-based detection) and detecting with AdaBoost (anomaly detection). Our preliminary evaluation shows that f_1 measure is 0.9928 and error rate is 0.75% in the case of our hybrid method, which outperforms other types of detection methods.
机译:在本文中,我们尝试开发一种基于机器学习的病毒电子邮件检测方法。本文的关键特征是采用邮件头和编码异常(MHEA)[1]。 MHEA能够区分病毒电子邮件和普通电子邮件,并且仅由5个变量组成,这些变量是从特定的电子邮件标题字段获得的。从MHEA生成签名比通过分析病毒代码生成签名更容易,因此,我们将MHEA作为特征来区分病毒电子邮件。首先,我们通过与电子邮件数据集(通过4130病毒邮件和2508正常邮件组成)的关联分析来细化MHEA的元素。结果表明,不应将MHEA的一种元素用于生成MHEA。接下来,我们探索一种将MHEA应用于针对病毒电子邮件的检测方法的方法。我们提出的方法是将MHEA(基于签名的检测)中的签名与AdaBoost(异常检测)进行匹配的混合体。我们的初步评估表明,在我们的混合方法中,f_1测度为0.9928,错误率为0.75%,胜过其他类型的检测方法。

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