Litcius/Paper detail

AndroOBFS

Saurabh Kumar, Debadatta Mishra, Biswabandan Panda, Sandeep K. Shukla

202211 citationsDOI

Abstract

With the large-scale adaptation of Android OS and ever-increasing contributions in the Android application space, Android has become the number one target of malware writers. In recent years, a large number of automatic malware detection and classification systems have evolved to tackle the dynamic nature of malware growth using either static or dynamic analysis techniques. Performance of static malware detection methods degrade due to the obfuscation attacks. Although many benchmark datasets are available to measure the performance of malware detection and classification systems, only a single obfuscated malware dataset (PRAGuard) is available to showcase the efficacy of the existing malware detection systems against the obfuscation attacks. PRAGuard contains outdated samples till March 2013 and does not represent the latest application categories. Moreover, PRAGuard does not provide the family information for malware because of which PRAGuard can not be used to evaluate the efficacy of the malware family classification systems.

Topics & Concepts

MalwareComputer scienceObfuscationAndroid malwareCryptovirologyAndroid (operating system)Mobile malwareStatic analysisBenchmark (surveying)System callMalware analysisOpcodeComputer securityOperating systemGeographyProgramming languageGeodesyAdvanced Malware Detection TechniquesNetwork Security and Intrusion DetectionSoftware Testing and Debugging Techniques