Referenz
Schmicker, R., Breitinger, F., & Baggili, I. (2019). AndroParse - An Android Feature Extraction Framework and Dataset. Paper presented at the International Conference on Digital Forensics and Cyber Crime (ICDF2C).
Publikationsart
Beitrag in Konferenztagungsband
Abstract
Android malware has become a major challenge. As a consequence, practitioners and researchers spend a significant time analyzing Android applications (APK). A common procedure (especially for data scientists) is to extract features such as permissions, APIs or strings which can then be analyzed. Current state of the art tools have three major issues: (1) a single tool cannot extract all the significant features used by scientists and practitioners (2) Current tools are not designed to be extensible and (3) Existing parsers can be timely as they are not runtime efficient or scalable. Therefore, this work presents AndroParse which is an open-source Android parser written in Golang that currently extracts the four most common features: Permissions, APIs, Strings and Intents. AndroParse outputs JSON files as they can easily be used by most major programming languages. Constructing the parser allowed us to create an extensive feature dataset which can be accessed by our independent REST API. Our dataset currently has 67,703 benign and 46,683 malicious APK samples.
Mitarbeiter
Einrichtungen
- Institut für Wirtschaftsinformatik
- Hilti Lehrstuhl für Daten- und Anwendungssicherheit