Android Malware Detection Using SVM and GA
نویسندگان
چکیده
Security is one of the main concerns for Smartphone users today. As the power and features of Smartphone’s increase, so has their vulnerability for attacks by viruses etc. An Android OS could be attacked by hackers: Because it’s Open platform, Users will access the Internet intensively and everyone can develop applications for Android. In previous technique described that how security can be improved of android operating system so that users can safely used the android smart phones, they have downloaded various android application from various android market on PC’s and Decompiled those applications to fetch manifest file of downloaded apps and Applied various data mining techniques to find out permissions patterns in malware infected applications. So these techniques are not much more sufficient for android operating system. In this paper we are using research finding to identify malware in android devices not in the pcs which is actual benefits of research. Keyword— Security Assessment, Software Security, Android
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