Phishing Attacks Detection A Machine Learning-Based Approach

Fatima Salahdine, Zakaria El Mrabet, N. Kaabouch
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引用次数: 8

Abstract

Phishing attacks are one of the most common social engineering attacks targeting users’ emails to fraudulently steal confidential and sensitive information. They can be used as a part of more massive attacks launched to gain a foothold in corporate or government networks. Over the last decade, a number of anti-phishing techniques have been proposed to detect and mitigate these attacks. However, they are still inefficient and inaccurate. Thus, there is a great need for efficient and accurate detection techniques to cope with these attacks. In this paper, we proposed a phishing attack detection technique based on machine learning. We collected and analyzed more than 4000 phishing emails targeting the email service of the University of North Dakota. We modeled these attacks by selecting 10 relevant features and building a large dataset. This dataset was used to train, validate, and test the machine learning algorithms. For performance evaluation, four metrics have been used, namely probability of detection, probability of miss-detection, probability of false alarm, and accuracy. The experimental results show that better detection can be achieved using an artificial neural network.
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基于机器学习的网络钓鱼攻击检测方法
网络钓鱼攻击是最常见的社会工程攻击之一,目标是用户的电子邮件,以欺诈性地窃取机密和敏感信息。它们可以被用作更大规模攻击的一部分,以在企业或政府网络中获得立足点。在过去的十年中,已经提出了许多反网络钓鱼技术来检测和减轻这些攻击。然而,它们仍然是低效和不准确的。因此,迫切需要高效、准确的检测技术来应对这些攻击。本文提出了一种基于机器学习的网络钓鱼攻击检测技术。我们收集并分析了4000多封针对北达科他州大学电子邮件服务的网络钓鱼邮件。我们通过选择10个相关特征并构建一个大型数据集来建模这些攻击。该数据集用于训练、验证和测试机器学习算法。对于性能评估,使用了四个指标,即检测概率、未检测概率、虚警概率和准确性。实验结果表明,使用人工神经网络可以达到更好的检测效果。
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