网络钓鱼网站检测:基于深度学习的模型和超参数优化有多有效?

IF 2.1 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Security and Privacy Pub Date : 2022-08-14 DOI:10.1002/spy2.256
May Almousa, Tianyang Zhang, A. Sarrafzadeh, Mohd Anwar
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引用次数: 3

摘要

网络钓鱼网站是欺诈性网站,看起来合法,欺骗毫无戒心的用户与他们互动,窃取他们的宝贵信息。由于网络钓鱼攻击是导致数据泄露的主要原因,网络安全管理已经探索了不同的反网络钓鱼解决方案,包括基于机器学习的技术方法。然而,在理解基于深度学习的模型与超参数优化一起用于网络钓鱼网站检测的鲁棒性方面存在差距。在这方面,本研究的任务是开发简洁的深度学习模型和超参数优化,以实现网络钓鱼网站检测的高精度和可重复的结果。本文演示了基于三种深度学习算法架构(基于长短期记忆的检测模型、基于全连接深度神经网络的检测模型和基于卷积神经网络的检测模型)构建检测模型的系统过程,这些模型使用四个公开可用的网络钓鱼网站数据集构建和评估,达到了97.37%的最佳准确率。我们还比较了两种不同的超参数优化算法:网格搜索和遗传算法,这两种算法的精度提高了0.1%-1%。
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Phishing website detection: How effective are deep learning‐based models and hyperparameter optimization?
Phishing websites are fraudulent websites that appear legitimate and trick unsuspecting users into interacting with them, stealing their valuable information. Because phishing attacks are a leading cause of data breach, different anti‐phishing solutions have been explored for cybersecurity management including machine learning‐based technical approaches. However, there is a gap in understanding how robust deep learning‐based models together with hyperparameter optimization are for phishing website detection. In this vein, this study pursues the tasks of developing parsimonious deep learning models and hyperparameter optimization to achieve high accuracy and reproducible results for phishing website detection. This paper demonstrates a systematic process of building detection models based on three deep learning algorithm architectures (Long Short‐Term Memory‐based detection models, Fully Connected Deep Neural Network‐based detection models, and convolutional neural network‐based detection models) that are built and evaluated using four publicly available phishing website datasets, achieving the best accuracy of 97.37%. We also compared two different optimization algorithms for hyperparameter optimization: Grid Search and Genetic Algorithm, which contributed to 0.1%–1% increase in accuracy.
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