3.8 Proceedings Paper

Automated Third-Party Library Detection for Android Applications: Are We There Yet?

出版社

IEEE COMPUTER SOC
DOI: 10.1145/3324884.3416582

关键词

Third-party library; Android; Library detection; Empirical study

资金

  1. National Natural Science Foundation of China [61702045]
  2. Australian Research Council (ARC) [DE200100016, DP200100020]
  3. Hong Kong RGC Projects [152223/17E, 152239/18E]
  4. Hong Kong PhD Fellowship Scheme
  5. Singapore National Research Foundation under NCR [NRF2018NCR-NSOE004-0001]

向作者/读者索取更多资源

Third-party libraries (TPLs) have become a significant part of the Android ecosystem. Developers can employ various TPLs with different functionalities to facilitate their app development. Unfortunately, the popularity of TPLs also brings new challenges and even threats. TPLs may carry malicious or vulnerable code, which can infect popular apps to pose threats to mobile users. Besides, the code of third-party libraries could constitute noises in some downstream tasks (e.g., malware and repackaged app detection). Thus, researchers have developed various tools to identify TPLs. However, no existing work has studied these TPL detection tools in detail; different tools focus on different applications with performance differences, but little is known about them. To better understand existing TPL detection tools and dissect TPL detection techniques, we conduct a comprehensive empirical study to fill the gap by evaluating and comparing all publicly available TPL detection tools based on four criteria: effectiveness, efficiency, code obfuscation-resilience capability, and ease of use. We reveal their advantages and disadvantages based on a systematic and thorough empirical study. Furthermore, we also conduct a user study to evaluate the usability of each tool. The results show that LibScout outperforms others regarding effectiveness, LibRadar takes less time than others and is also regarded as the most easy-to-use one, and LibPecker performs the best in defending against code obfuscation techniques. We further summarize the lessons learned from different perspectives, including users, tool implementation, and researchers. Besides, we enhance these open-sourced tools by fixing their limitations to improve their detection ability. We also build an extensible framework that integrates all existing available TPL detection tools, providing online service for the research community. We make publicly available the evaluation dataset and enhanced tools. We believe our work provides a clear picture of existing TPL detection techniques and also give a road-map for future directions.

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