Digital Library[ Search Result ]
Phishing Webpage Detection using URL and HTML Graphs based on a Multimodal AutoEncoder Ensemble
Jun-Ho Yoon, Seok-Hun Choi, Hae-Jung Kim, Seok-Jun Buu
http://doi.org/10.5626/JOK.2025.52.6.461
As the internet continues to evolve, phishing attacks are increasingly targeting users, highlighting the need for effective detection methods. Traditional approaches focus on analyzing URL character sequences; however, phishing URLs often mimic legitimate patterns and have a short lifespan, limiting detection accuracy. To address this, we propose a multimodal ensemble-based phishing detection method that leverages both URL strings and HTML graph data. Character-level URL sequences are processed using a Convolutional AutoEncoder (CAE), while HTML DOM structures are converted into graph formats and analyzed with a Graph Convolutional AutoEncoder (GCAE). The extracted latent vectors are integrated via a Transformer layer to classify phishing webpages. The proposed model improves detection performance by up to 18.91 percentage points in F1 Score compared to existing methods, and case analysis reveals the interrelationship between URL and HTML features.
VNF Anomaly Detection Method based on Unsupervised Machine Learning
Seondong Heo, Seunghoon Jeong, Hosang Yun
http://doi.org/10.5626/JOK.2022.49.9.780
By applying virtualization technology to telecommunication networks, it is possible to reduce hardware dependencies and provide flexible control and management to the operators. In addition, since Capital Expenditure (CAPEX) and Operating Expenditure (OPEX) can be reduced by utilizing the technology, modern telco operators and service providers are using Software-Defined Networking(SDN) and Network Function Virtualization (NFV) technology to provide services more efficiently. As SDN and NFV are widely used, cyber attacks on Vitualized Network Functions (VNF) that degrade the quality of service or cause service denial are increasing. In this study, we propose a VNF anomaly detection method based on unsupervised machine learning techniques that models the steady states of VNFs and detects abnormal states caused by cyber attacks.
Search

Journal of KIISE
- ISSN : 2383-630X(Print)
- ISSN : 2383-6296(Electronic)
- KCI Accredited Journal
Editorial Office
- Tel. +82-2-588-9240
- Fax. +82-2-521-1352
- E-mail. chwoo@kiise.or.kr