Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6885357 | Journal of Systems and Software | 2018 | 11 Pages |
Abstract
Mobile phones are becoming increasingly pervasive. Among them, HTML5-based hybrid applications are more and more popular because of their portability on different systems. However these applications suffer from code injection attacks. In this paper, we construct a novel deep learning network, Hybrid Deep Learning Network (HDLN), and use it to detect these attacks. At first, based on our previous work, we extract more features from Syntax Tree (AST) of JavaScript and employ three methods to select key features. Then we get the feature vectors and train HDLN to distinguish vulnerable applications from normal ones. Finally thorough experiments are done to validate our methods. The results show our detection approach with HDLN achieves 97.55% in accuracy and 97.60% in AUC, which outperforms those with other traditional classifiers and gets higher average precision than other detection methods.
Keywords
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Networks and Communications
Authors
Ruibo Yan, Xi Xiao, Guangwu Hu, Sancheng Peng, Yong Jiang,