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Abstract
The proliferation of phishing sites and emails poses significant challenges
to existing cybersecurity efforts. Despite advances in malicious email filters
and email security protocols, problems with oversight and false positives
persist. Users often struggle to understand why emails are flagged as
potentially fraudulent, risking the possibility of missing important
communications or mistakenly trusting deceptive phishing emails. This study
introduces ChatSpamDetector, a system that uses large language models (LLMs) to
detect phishing emails. By converting email data into a prompt suitable for LLM
analysis, the system provides a highly accurate determination of whether an
email is phishing or not. Importantly, it offers detailed reasoning for its
phishing determinations, assisting users in making informed decisions about how
to handle suspicious emails. We conducted an evaluation using a comprehensive
phishing email dataset and compared our system to several LLMs and baseline
systems. We confirmed that our system using GPT-4 has superior detection
capabilities with an accuracy of 99.70%. Advanced contextual interpretation by
LLMs enables the identification of various phishing tactics and impersonations,
making them a potentially powerful tool in the fight against email-based
phishing threats.