基于单一和混合集成学习的钓鱼网站检测:检查不同性质数据集的影响和信息特征选择技术

Kibreab Adane, Berhanu Beyene, Mohammed Abebe
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引用次数: 1

摘要

为了解决与网络钓鱼网站攻击相关的问题,本研究对RF、GB和CATB分类器进行了严格的实验。因为每个分类器本身就是一个集成学习器;我们将它们集成到堆叠和多数投票集成架构中,以创建混合集成学习。由于集成学习方法以其高计算时间成本而闻名,该研究应用UFS技术来解决这些问题并获得了有希望的结果。由于跨多个数据集的网络钓鱼网站检测系统的可扩展性和性能一致性对于打击各种变体的网络钓鱼网站攻击至关重要,因此我们使用了三个不同的网络钓鱼网站数据集(DS-1, DS-2和DS-3)来训练和测试每种集成学习方法,以确定在准确性和模型计算时间方面表现最佳的方法。实验结果表明,CATB分类器在三个不同的数据集上表现出可扩展性、一致性和卓越的准确性(在DS-1中达到97.9%的准确率,在DS-2中达到97.36%的准确率,在DS-3中达到98.59%的准确率)。在模型计算时间方面,RF分类器在应用于所有数据集时被发现是最快的,而CATB分类器在应用于所有数据集时被发现是第二快的。
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Single and Hybrid-Ensemble Learning-Based Phishing Website Detection: Examining Impacts of Varied Nature Datasets and Informative Feature Selection Technique
To tackle issues associated with phishing website attacks, the study conducted rigorous experiments on RF, GB, and CATB classifiers. Since each classifier was an ensemble learner on their own; we integrated them into stacking and majority vote ensemble architectures to create hybrid-ensemble learning. Due to ensemble learning methods being known for their high computational time costs, the study applied the UFS technique to address these concerns and obtained promising results. Since the scalability and performance consistency of the phishing website detection system across numerous datasets is critical to combating various variants of phishing website attacks, we used three distinct phishing website datasets (DS-1, DS-2, and DS-3) to train and test each ensemble learning method to identify the best-performed one in terms of accuracy and model computational time. Our experimental findings reveal that the CATB classifier demonstrated scalable, consistent, and superior accuracy across three distinct datasets (attained 97.9% accuracy in DS-1, 97.36% accuracy in DS-2, and 98.59% accuracy in DS-3). When it comes to model computational time, the RF classifier was discovered to be the fastest when applied to all datasets, while the CATB classifier was discovered to be the second quickest when applied to all datasets.
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