Literature Analysis on Malware Detection

نویسندگان

  • Parmjit Kaur
  • Sumit Sharma
چکیده

Usage of Android smartphones is more as compared to another smartphones due to its Open Source Operating System. Due to its Open OS, Android enables us to install third party applications. However, Security is one of the main concerns in Android. Security threats of malicious applications are rapidly increasing due to the nature of the third party applications where only developers can assign required permissions. Applications are installed on the basis of all or nothing basis. For this reason, attackers can inject into a normal application with inappropriately acquired permissions. In this paper, we have described the android architecture, various types of malware and literature analysis for security considerations in android smartphones, including the various general approaches and techniques for detection of various malwares.

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تاریخ انتشار 2014