Visible to the public An Adaptive Machine Learning Based Approach for Phishing Detection Using Hybrid Features

TitleAn Adaptive Machine Learning Based Approach for Phishing Detection Using Hybrid Features
Publication TypeConference Paper
Year of Publication2019
AuthorsYadollahi, Mohammad Mehdi, Shoeleh, Farzaneh, Serkani, Elham, Madani, Afsaneh, Gharaee, Hossein
Conference Name2019 5th International Conference on Web Research (ICWR)
ISBN Number978-1-7281-1431-6
Keywordsadaptive machine learning based approach, anti-phishing system, blacklisting, Computer crime, cyber security, feature extraction, feature-rich machine learning technique, Human Behavior, human factors, hybrid features, Hypertext systems, intelligent phishing detection, Internet, learning (artificial intelligence), Learning Classifier System, machine learning, phishing, phishing attackers, Phishing Detection, phishing Websites, pubcrawl, Real-time Systems, reliable detection system, Uniform resource locators, URLs, web security, Web sites, Web threats, Webpages source code, World Wide Web
Abstract

Nowadays, phishing is one of the most usual web threats with regards to the significant growth of the World Wide Web in volume over time. Phishing attackers always use new (zero-day) and sophisticated techniques to deceive online customers. Hence, it is necessary that the anti-phishing system be real-time and fast and also leverages from an intelligent phishing detection solution. Here, we develop a reliable detection system which can adaptively match the changing environment and phishing websites. Our method is an online and feature-rich machine learning technique to discriminate the phishing and legitimate websites. Since the proposed approach extracts different types of discriminative features from URLs and webpages source code, it is an entirely client-side solution and does not require any service from the third-party. The experimental results highlight the robustness and competitiveness of our anti-phishing system to distinguish the phishing and legitimate websites.

URLhttps://ieeexplore.ieee.org/document/8765265
DOI10.1109/ICWR.2019.8765265
Citation Keyyadollahi_adaptive_2019