Evolution of mobile devices, availability of additional resources coupled with enhanced functionality has leveraged smartphone to substitute the conventional computing devices. Mobile device users have adopted smartphones for online payments, sending emails, social networking, and stores the user sensitive information. The ever increasing mobile devices has attracted malware authors and cybercriminals to target mobile platforms. Android, the most popular open source mobile OS is being targeted by the malware writers. In particular, less monitored third party markets are being used as infection and propagation sources. Given the threats posed by the increasing number of malicious apps, security researchersmust be able to analyze the malware quickly and efficiently; this may not be feasible with the manual analysis. Hence, automated analysis techniques for app vetting and malware detection are necessary. In this chapter, we present DroidAnalyst, a novel automated app vetting and malware analysis framework that integrates the synergy of static and dynamic analysis to improve accuracy and efficiency of analysis. DroidAnalyst generates a unified analysis model that combines the strengths of the complementary approaches with multiple detection methods, to increase the app code analysis. We have evaluated our proposed solution DroidAnalyst against a reasonable dataset consisting real-world benign and malware apps.
CITATION STYLE
Faruki, P., Bhandari, S., Laxmi, V., Gaur, M., & Conti, M. (2015). Droidanalyst: Synergic app framework for static and dynamic app analysis. Studies in Computational Intelligence, 621, 519–552. https://doi.org/10.1007/978-3-319-26450-9_20
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