cs.AI updates on arXiv.org 08月15日
An Explainable Transformer-based Model for Phishing Email Detection: A Large Language Model Approach
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本文提出了一种基于DistilBERT的钓鱼邮件检测模型,通过数据预处理和模型优化,实现了高精度检测,并使用可解释AI技术进行模型解释。

arXiv:2402.13871v2 Announce Type: replace-cross Abstract: Phishing email is a serious cyber threat that tries to deceive users by sending false emails with the intention of stealing confidential information or causing financial harm. Attackers, often posing as trustworthy entities, exploit technological advancements and sophistication to make detection and prevention of phishing more challenging. Despite extensive academic research, phishing detection remains an ongoing and formidable challenge in the cybersecurity landscape. Large Language Models (LLMs) and Masked Language Models (MLMs) possess immense potential to offer innovative solutions to address long-standing challenges. In this research paper, we present an optimized, fine-tuned transformer-based DistilBERT model designed for the detection of phishing emails. In the detection process, we work with a phishing email dataset and utilize the preprocessing techniques to clean and solve the imbalance class issues. Through our experiments, we found that our model effectively achieves high accuracy, demonstrating its capability to perform well. Finally, we demonstrate our fine-tuned model using Explainable-AI (XAI) techniques such as Local Interpretable Model-Agnostic Explanations (LIME) and Transformer Interpret to explain how our model makes predictions in the context of text classification for phishing emails.

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钓鱼邮件检测 DistilBERT 可解释AI 数据预处理
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