A Noise-Resilient Attention Guided Contrastive Learning Framework for Phishing Email Detection.

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Bibliographic Details
Title: A Noise-Resilient Attention Guided Contrastive Learning Framework for Phishing Email Detection.
Authors: Gueddoudj, El Yazid1,2, Attia, Abdelouahab3,4, Chikh, Azeddine2,5 elyazid.gueddoudj@univ-batna.dz
Source: International Journal of Performability Engineering. Jun2026, Vol. 22 Issue 6, p297-308. 12p.
Subjects: Phishing, Contrastive learning, Email security, Internet security, Adversarial machine learning
Abstract: Phishing emails are a serious cybersecurity risk because they take advantage of people's weaknesses to obtain private information. Both conventional heuristics and classical machine learning techniques are undermined by their intrinsically noisy, obfuscated, and constantly changing character. Because they are unable to learn invariant, discriminative representations and deliberately suppress noise, even the most advanced deep learning models have limited robustness. In this paper, we provide a novel noise-augmented, attention-guided contrastive learning framework for reliable phishing email detection in order to overcome these difficulties. However, we introduce two crucial novelties: (i) the noise augmentation policy, producing perturbed views of an email to account for variability and obfuscation in the wild, and (ii) an attention-guided contrastive learning method to focus on more informative features and discard noisy ones in contrastive representation learning. By leveraging this synergy, the model can obtain class-discriminative and noise-invariant embeddings, guaranteeing accurate identification even in the face of extreme adversarial perturbations. Comprehensive evaluations on the publicly accessible Phishing Email Detection dataset show that the proposed framework routinely achieves accuracy gains of at least 1.5% and 1.22%, respectively, over twelve cutting-edge baselines. These findings confirm the efficacy and superiority of the suggested method for acquiring reliable, noise-resistant representations for precise phishing detection in practical settings. [ABSTRACT FROM AUTHOR]
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Database: Engineering Source
Description
Abstract:Phishing emails are a serious cybersecurity risk because they take advantage of people's weaknesses to obtain private information. Both conventional heuristics and classical machine learning techniques are undermined by their intrinsically noisy, obfuscated, and constantly changing character. Because they are unable to learn invariant, discriminative representations and deliberately suppress noise, even the most advanced deep learning models have limited robustness. In this paper, we provide a novel noise-augmented, attention-guided contrastive learning framework for reliable phishing email detection in order to overcome these difficulties. However, we introduce two crucial novelties: (i) the noise augmentation policy, producing perturbed views of an email to account for variability and obfuscation in the wild, and (ii) an attention-guided contrastive learning method to focus on more informative features and discard noisy ones in contrastive representation learning. By leveraging this synergy, the model can obtain class-discriminative and noise-invariant embeddings, guaranteeing accurate identification even in the face of extreme adversarial perturbations. Comprehensive evaluations on the publicly accessible Phishing Email Detection dataset show that the proposed framework routinely achieves accuracy gains of at least 1.5% and 1.22%, respectively, over twelve cutting-edge baselines. These findings confirm the efficacy and superiority of the suggested method for acquiring reliable, noise-resistant representations for precise phishing detection in practical settings. [ABSTRACT FROM AUTHOR]
ISSN:09731318
DOI:10.23940/ijpe.26.06.p1.297308