A Transformer-based Model to Detect Phishing URLs

09/05/2021
by   Pingfan Xu, et al.
0

Phishing attacks are among emerging security issues that recently draws significant attention in the cyber security community. There are numerous existing approaches for phishing URL detection. However, malicious URL detection is still a research hotspot because attackers can bypass newly introduced detection mechanisms by changing their tactics. This paper will introduce a transformer-based malicious URL detection model, which has significant accuracy and outperforms current detection methods. We conduct experiments and compare them with six existing classical detection models. Experiments demonstrate that our transformer-based model is the best performing model from all perspectives among the seven models and achieves 97.3 detection accuracy.

READ FULL TEXT
research
06/28/2021

Realtime Robust Malicious Traffic Detection via Frequency Domain Analysis

Machine learning (ML) based malicious traffic detection is an emerging s...
research
10/06/2022

Effective Metaheuristic Based Classifiers for Multiclass Intrusion Detection

Network security has become the biggest concern in the area of cyber sec...
research
11/26/2021

Machine Unlearning: Learning, Polluting, and Unlearning for Spam Email

Machine unlearning for security is studied in this context. Several spam...
research
03/24/2022

Email Summarization to Assist Users in Phishing Identification

Cyber-phishing attacks recently became more precise, targeted, and tailo...
research
08/09/2019

Tracking Temporal Evolution of Network Activity for Botnet Detection

Botnets are becoming increasingly prevalent as the primary enabling tech...
research
05/22/2018

A Survey on Malicious Domains Detection through DNS Data Analysis

Malicious domains are one of the major resources required for adversarie...
research
01/23/2019

Context-Sensitive Malicious Spelling Error Correction

Misspelled words of the malicious kind work by changing specific keyword...

Please sign up or login with your details

Forgot password? Click here to reset