cs.AI updates on arXiv.org 09月26日
字符级深度学习模型在钓鱼攻击检测中的应用
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本文研究字符级深度学习模型在钓鱼攻击检测中的有效性,评估了三种模型在自定义电子邮件数据集上的性能,并分析了其在不同场景下的表现,包括对抗攻击和资源受限情况。

arXiv:2509.20589v1 Announce Type: cross Abstract: Phishing attacks targeting both organizations and individuals are becoming an increasingly significant threat as technology advances. Current automatic detection methods often lack explainability and robustness in detecting new phishing attacks. In this work, we investigate the effectiveness of character-level deep learning models for phishing detection, which can provide both robustness and interpretability. We evaluate three neural architectures adapted to operate at the character level, namely CharCNN, CharGRU, and CharBiLSTM, on a custom-built email dataset, which combines data from multiple sources. Their performance is analyzed under three scenarios: (i) standard training and testing, (ii) standard training and testing under adversarial attacks, and (iii) training and testing with adversarial examples. Aiming to develop a tool that operates as a browser extension, we test all models under limited computational resources. In this constrained setup, CharGRU proves to be the best-performing model across all scenarios. All models show vulnerability to adversarial attacks, but adversarial training substantially improves their robustness. In addition, by adapting the Gradient-weighted Class Activation Mapping (Grad-CAM) technique to character-level inputs, we are able to visualize which parts of each email influence the decision of each model. Our open-source code and data is released at https://github.com/chipermaria/every-character-counts.

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钓鱼攻击检测 字符级深度学习 对抗攻击 资源受限
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