Phishing URL Detection Via Capsule-Based Neural Network
Title | Phishing URL Detection Via Capsule-Based Neural Network |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Huang, Yongjie, Qin, Jinghui, Wen, Wushao |
Conference Name | 2019 IEEE 13th International Conference on Anti-counterfeiting, Security, and Identification (ASID) |
Date Published | oct |
Publisher | IEEE |
ISBN Number | 978-1-7281-2458-2 |
Keywords | capsule network, capsule-based neural network, Computer crime, convolution, convolutional layer, convolutional neural nets, critical threat, cyber attack, cyber security, Deep Learning, feature extraction, feature representations, Heuristic algorithms, Human Behavior, human factors, machine learning, Neural networks, phishing, phishing attacks, phishing criminals, Phishing Detection, phishing detection method, phishing Website, pubcrawl, sensitive information, Social Engineering, substantial manual feature engineering, uniform resource locator, Uniform resource locators, unsolicited e-mail, URL Detection, Web sites |
Abstract | As a cyber attack which leverages social engineering and other sophisticated techniques to steal sensitive information from users, phishing attack has been a critical threat to cyber security for a long time. Although researchers have proposed lots of countermeasures, phishing criminals figure out circumventions eventually since such countermeasures require substantial manual feature engineering and can not detect newly emerging phishing attacks well enough, which makes developing an efficient and effective phishing detection method an urgent need. In this work, we propose a novel phishing website detection approach by detecting the Uniform Resource Locator (URL) of a website, which is proved to be an effective and efficient detection approach. To be specific, our novel capsule-based neural network mainly includes several parallel branches wherein one convolutional layer extracts shallow features from URLs and the subsequent two capsule layers generate accurate feature representations of URLs from the shallow features and discriminate the legitimacy of URLs. The final output of our approach is obtained by averaging the outputs of all branches. Extensive experiments on a validated dataset collected from the Internet demonstrate that our approach can achieve competitive performance against other state-of-the-art detection methods while maintaining a tolerable time overhead. |
URL | https://ieeexplore.ieee.org/document/8925000 |
DOI | 10.1109/ICASID.2019.8925000 |
Citation Key | huang_phishing_2019 |
- Neural networks
- Web sites
- URL Detection
- unsolicited e-mail
- Uniform resource locators
- uniform resource locator
- substantial manual feature engineering
- social engineering
- sensitive information
- pubcrawl
- phishing Website
- phishing detection method
- Phishing Detection
- phishing criminals
- phishing attacks
- Phishing
- capsule network
- machine learning
- Human Factors
- Human behavior
- Heuristic algorithms
- feature representations
- feature extraction
- deep learning
- cyber security
- cyber attack
- critical threat
- convolutional neural nets
- convolutional layer
- convolution
- Computer crime
- capsule-based neural network