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PhishIntel: Toward Practical Deployment of Reference-based Phishing Detection

Authors :
Li, Yuexin
Tan, Hiok Kuek
Meng, Qiaoran
Lock, Mei Lin
Cao, Tri
Deng, Shumin
Oo, Nay
Lim, Hoon Wei
Hooi, Bryan
Publication Year :
2024

Abstract

Phishing is a critical cyber threat, exploiting deceptive tactics to compromise victims and cause significant financial losses. While reference-based phishing detectors (RBPDs) achieve high precision by analyzing brand-domain consistency, their real-world deployment is hindered by challenges such as high latency and inefficiency in URL analysis. To address these limitations, we present PhishIntel, an end-to-end phishing detection system for real-world deployment. PhishIntel intelligently determines whether a URL can be processed immediately or not, segmenting the detection process into two distinct tasks: a fast task that checks against local blacklists and result cache, and a slow task that conducts online blacklist verification, URL crawling, and webpage analysis using an RBPD. This fast-slow task system architecture ensures low response latency while retaining the robust detection capabilities of RBPDs for zero-day phishing threats. Furthermore, we develop two downstream applications based on PhishIntel: a phishing intelligence platform and a phishing email detection plugin for Microsoft Outlook, demonstrating its practical efficacy and utility.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.09057
Document Type :
Working Paper