Phishing e-mail detection by using deep learning algorithms

R. Hassanpour, Erdogan Dogdu, R. Choupani, Onur Goker, Nazli Nazli
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引用次数: 17

Abstract

Phishing e-mails are considered as spam e-mails, which aim to collect sensitive personal information about the users via network. Since the main purpose of this behavior is mostly to harm users financially, it is vital to detect these phishing or spam e-mails immediately to prevent unauthorized access to users' vital information. To detect phishing e-mails, using a quicker and robust classification method is important. Considering the billions of e-mails on the Internet, this classification process is supposed to be done in a limited time to analyze the results. In this work, we present some of the early results on the classification of spam email using deep learning and machine methods. We utilize word2vec to represent emails instead of using the popular keyword or other rule-based methods. Vector representations are then fed into a neural network to create a learning model. We have tested our method on an open dataset and found over 96% accuracy levels with the deep learning classification methods in comparison to the standard machine learning algorithms.
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利用深度学习算法进行网络钓鱼电子邮件检测
网络钓鱼邮件被认为是垃圾邮件,其目的是通过网络收集用户的敏感个人信息。由于这种行为的主要目的是在经济上损害用户,因此立即检测这些网络钓鱼或垃圾邮件以防止对用户重要信息的未经授权的访问至关重要。为了检测网络钓鱼电子邮件,使用更快、更健壮的分类方法非常重要。考虑到互联网上有数十亿封电子邮件,这个分类过程应该在有限的时间内完成,以分析结果。在这项工作中,我们展示了一些使用深度学习和机器方法对垃圾邮件进行分类的早期结果。我们使用word2vec来表示电子邮件,而不是使用流行的关键字或其他基于规则的方法。然后将向量表示输入神经网络以创建学习模型。我们在一个开放数据集上测试了我们的方法,发现与标准机器学习算法相比,深度学习分类方法的准确率超过96%。
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