基于神经网络的社会工程检测

Hanan Sandouka, A. Cullen, Ian Mann
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引用次数: 29

摘要

社会工程(SE)被认为是当今信息安全面临的最常见问题之一。检测社会工程很重要,因为它试图保护组织、消费者和系统免受未经授权的访问或通过操纵员工泄露一些秘密的企图。这项工作的目的是介绍一种使用神经网络检测社会工程的新技术。在这项工作中,我们使用基准数据并开发了一种新技术来提取可用于神经网络测试和训练的特征。初步结果令人鼓舞,并表明机器学习可以增加额外的安全层,以保护个人和组织免受社会工程攻击。未来的工作包括扩展数据集,以包含额外的攻击场景和基准数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Engineering Detection Using Neural Networks
Social Engineering (SE) is considered to be one of the most common problems facing information security today. Detecting social engineering is important because it attempts to secure organisations, consumers and systems from attempts to gain unauthorized access or to reveal some secrets by manipulating employees. The aim of this work is to introduce a new technique for detecting social engineering using neural networks. In this work we have used benchmark data and developed a new technique to extract features that can be used for neural network testing and training. Initial results are encouraging and indicate that machine learning can add an extra layer of security to protect individuals and organisations from social engineering attacks. Future work includes expanding the data set to include additional attack scenarios and benchmark data.
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