CLAINov 1, 2023

An Improved Transformer-based Model for Detecting Phishing, Spam, and Ham: A Large Language Model Approach

arXiv:2311.04913v236 citationsh-index: 17
Originality Synthesis-oriented
AI Analysis

This work addresses email security threats like phishing and spam, which cause financial and time losses globally, but it is incremental as it applies existing LLM fine-tuning methods to this domain.

The authors tackled phishing and spam email detection by fine-tuning BERT-based models, resulting in improved classification performance on both unbalanced and balanced datasets.

Phishing and spam detection is long standing challenge that has been the subject of much academic research. Large Language Models (LLM) have vast potential to transform society and provide new and innovative approaches to solve well-established challenges. Phishing and spam have caused financial hardships and lost time and resources to email users all over the world and frequently serve as an entry point for ransomware threat actors. While detection approaches exist, especially heuristic-based approaches, LLMs offer the potential to venture into a new unexplored area for understanding and solving this challenge. LLMs have rapidly altered the landscape from business, consumers, and throughout academia and demonstrate transformational potential for the potential of society. Based on this, applying these new and innovative approaches to email detection is a rational next step in academic research. In this work, we present IPSDM, our model based on fine-tuning the BERT family of models to specifically detect phishing and spam email. We demonstrate our fine-tuned version, IPSDM, is able to better classify emails in both unbalanced and balanced datasets. This work serves as an important first step towards employing LLMs to improve the security of our information systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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