Back to Search Start Over

SEPAL: Towards a Large-scale Analysis of SEAndroid Policy Customization

Authors :
Guozhu Meng
Guangliang Yang
Wei Zou
Xiaorui Gong
Yue Jiang
Kai Chen
Xiaoyu Wang
Xiaobo Xiang
Wenchang Shi
Dongsong Yu
Xiu Zhang
Wenke Lee
Source :
WWW
Publication Year :
2021
Publisher :
ACM, 2021.

Abstract

To investigate the status quo of SEAndroid policy customization, we propose SEPAL, a universal tool to automatically retrieve and examine the customized policy rules. SEPAL applies the NLP technique and employs and trains a wide&deep model to quickly and precisely predict whether one rule is unregulated or not.Our evaluation shows SEPAL is effective, practical and scalable. We verify SEPAL outperforms the state of the art approach (i.e., EASEAndroid) by 15% accuracy rate on average. In our experiments, SEPAL successfully identifies 7,111 unregulated policy rules with a low false positive rate from 595,236 customized rules (extracted from 774 Android firmware images of 72 manufacturers). We further discover the policy customization problem is getting worse in newer Android versions (e.g., around 8% for Android 7 and nearly 20% for Android 9), even though more and more efforts are made. Then, we conduct a deep study and discuss why the unregulated rules are introduced and how they can compromise user devices. Last, we report some unregulated rules to seven vendors and so far four of them confirm our findings.<br />12 pages, 9 figures, accepted by WWW'21

Details

Database :
OpenAIRE
Journal :
Proceedings of the Web Conference 2021
Accession number :
edsair.doi.dedup.....149bbc1bcae95deb6db7a65b38e8339d
Full Text :
https://doi.org/10.1145/3442381.3450007