A privacy-preserving approach for detecting smishing attacks using federated deep learning

Mohamed Abdelkarim Remmide, Fatima Boumahdi, Bousmaha Ilhem, Narhimene Boustia
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Abstract

Smishing is a type of social engineering attack that involves sending fraudulent SMS messages to trick recipients into revealing sensitive information. In recent years, it has become a significant threat to mobile communications. In this study, we introduce a novel smishing detection method based on federated learning, which is a decentralized approach ensuring data privacy. We develop a robust detection model within a federated learning framework based on deep learning methods such as Long Short-Term Memory (LSTM) and Bidirectional LSTM (Bi-LSTM). Our experiments show that the federated learning method using Bi-LSTM achieves an accuracy of 88.78%, highlighting its effectiveness in tackling smishing detection while preserving user privacy. This approach not only offers a promising solution to smishing attacks but also lays the groundwork for future research in mobile security and privacy-preserving machine learning.

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利用联合深度学习检测网络钓鱼攻击的隐私保护方法
网络钓鱼(Smishing)是一种社会工程学攻击,通过发送欺诈性短信诱骗收件人泄露敏感信息。近年来,它已成为移动通信的一个重大威胁。在本研究中,我们介绍了一种基于联合学习的新型网络钓鱼检测方法,这是一种确保数据隐私的分散方法。我们基于长短期记忆(LSTM)和双向 LSTM(Bi-LSTM)等深度学习方法,在联合学习框架内开发了一种稳健的检测模型。我们的实验表明,使用 Bi-LSTM 的联合学习方法达到了 88.78% 的准确率,突出了它在保护用户隐私的同时解决钓鱼检测问题的有效性。这种方法不仅为网络钓鱼攻击提供了一种前景广阔的解决方案,还为移动安全和隐私保护机器学习领域的未来研究奠定了基础。
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