Abstract

Over the past few years, Android Application is deemed as one of the fastest-growing technology areas. On the other hand, the rapid growth of android applications also increases the security threats for Android users in the form of malware. Malware hacks the personal information of a user and exploits it in different criminal activities. To date, various studies have been conducted for the detection of android malware. Some authors have preferred static analysis while others have performed dynamic analysis for android malware detection. In static analysis, researchers have only employed one feature of android application either intents or permissions. As best of our knowledge, there does not exist any technique that combines both intents and permissions. In this paper, we have performed static analysis for the detection of Android malware using android intents (both implicit and explicit), android permissions and combination of intents and permissions. Furthermore, the classification is performed to analyze the effectiveness of different machine learning algorithms for malware detection and to identify the best performing feature. Our experiment results show that combination of intents and permissions play a key role in the detection of android malware.

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