An Approach to Reveal Unknown Malware Hiding Techniques


연구 분야: Safety



학회: 2023 IEEE/ACIS 8th International Conference on Big Data, Cloud Computing, and Data Science (BCD)


초록

Security research on smart devices mostly focuses on malware installation and activation, privilege escalation, remote control, financial charges, personal information stealing, and permission use. Less attention has been paid to the deceptive mechanisms, which are critical for the success of malware on smart devices. Generally, malware first gets installed and then continues operating on the device without attracting suspicion from users. To do so, smart device malware uses various techniques to conceal itself, e.g., hiding activity, muting the phone, and deleting call logs. In this work, we developed an approach to semi-automatically reveal unknown malware hiding techniques. First, it extracts SMH behaviors from malware descriptions by using natural language processing techniques. Second, it maps SMH behaviors to SMH-related APIs based on the analysis of API documents. Third, it performs static analysis on the malware apps that contain unknown SMH behaviors to extract the code segments related to the SMH API calls. For those verified SMH code segments, we describe the techniques used for unknown SMH behaviors based on the code segments. Our experiment tested 119 malware apps with hiding behaviors. The F-measure is 85.58%, indicating that our approach is quite effective.


Author Profile
Zhiyong Shan

School of Computing Wichita State University USA

United States
Author Profile
Harsha Vardhan Reddy Channu

School of Computing Wichita State University USA

United States

📄 논문 정보

발행 연도 2023년
인용수 1
출판 국가 United States
사이트 IEEE
좋아요 수 0

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