Phishing Web Page Detection with Semi-Supervised Deep Anomaly Detection

2021 
Phishing web page is one of the most serious threats to the users of the Internet. Recently, deep learning-based phishing detection methods have achieved significant improvement. However, these supervised deep neural networks require a large number of training samples. They also have difficulties in detecting novel phishing web pages. Using anomaly detection approaches is a possible way out yet is currently less explored, possibly due to two reasons. First, HTML codes lie in high dimensional discrete space which is difficult to handle for existing anomaly detection methods. Second, existing anomaly detection methods may find other types of anomalies that are beyond the scope of phishing.
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