تجاوز إلى المحتوى الرئيسي

SM-Detector: A security model based on BERT to detect SMiShing messages in mobile environments

Author name : Abdallah Ghourabi
Publication Date : 2021-06-14
Journal Name : Concurrency and Computation: Practice and Experience - Wiley

Abstract

The growing use of SMS by businesses to communicate with their customers has made attackers more interested in smishing attacks. Smishing is a security attack that involves sending a fake SMS message in order to steal the personal credentials of mobile users. This kind of attack has become a serious cyber-security issue and has caused great financial losses for both people and businesses. In this article we propose a hybrid security model called “SM-Detector” aiming to detect smishing messages in mobile environments. To increase the efficiency of “SM-Detector,” we have combined three different detection methods: (i) identification of malicious URLs, (ii) identification of suspected words, phone numbers and emails with regular expression analysis, and (iii) classification of messages using BERT-based algorithms to distinguish spam messages. “SM-Detector” also includes a mobile application allowing the user to check their SMS and report smishing messages. Its strength is that it can deal with mixed text messages written in Arabic or English. The experimental evaluation conducted on English and Arabic datasets showed a remarkable accuracy of 99.63%.

Keywords

BERT, mobile security, SMiShing detection, SMS classification

Publication Link

https://doi.org/10.1002/cpe.6452

Block_researches_list_suggestions

Suggestions to read

HIDS-IoMT: A Deep Learning-Based Intelligent Intrusion Detection System for the Internet of Medical Things
Ahlem . Harchy Ep Berguiga
“Synthesis and Characterization study of SnO2/α-Fe2O3, In2O3/α-Fe2O3 and ZnO/α-Fe2O3 thin films and its application as transparent conducting electrode in silicon heterojunction solar cell”
Asma Arfaoui
Frequency and voltage dependent of electrical and dielectric properties of 14 nm Fully Depleted Silicon-On-Insulator (FD-SOI)
MOHAMMED OMAR MOHAMMEDAHMED IBRAHIM
Strengths Mindset as a Mediator in the Relationship Between Paradoxical Leadership and Nurses' Positive Attitudes Towards Artificial Intelligence: A Cross-Sectional Study
MOHAMED ELSAYED MOHAMED ZAKY
تواصل معنا