An Android malware detection based on reconstructed API with TextCNN


연구 분야: Safety



학회: International Journal of Information Security


초록

Most of machine learning-based Android malware detection methods use the application programming interface (API) as features. However, the effectiveness of API-based methods is often compromised by API changes during the evolution of the Android system. At the same time, most of these methods only use system APIs, so they cannot detect malicious apps that realize malicious behavior through third-party APIs. To address this problem, we have proposed an API names reconstruction method and have developed a feature selection approach that leverages the weights of these reconstructed names. Following this, we constructed a TextCNN-based Android malware detection model. To validate the robustness of our method against API changes, we conducted a series of cross-validation experiments using samples from different years. Comparison test also has been conducted, demonstrating that our detection method achieves superior performance.


Author Profile
Jingtian Jiang

College of Computer Science Chongqing University 174 Shazheng Street Chongqing China

China
Author Profile
Jiyun Yang

College of Computer Science Chongqing University 174 Shazheng Street Chongqing China

China
Author Profile
Jianhui Wang

School of Information and Software Engineering University of Electronic Science and Technology of China 2006 Xiyuan Street Chengdu China

Andorra

📄 논문 정보

발행 연도 2025년
인용수 0
출판 국가 Andorra, China
사이트 Springer
좋아요 수 0

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