Hamdi, Suhaib Jasim and Omar, Naaman and AL-zebari, Adel and Merceedi, Karwan Jameel and Ahmed, Abdulraheem Jamil and Salim, Nareen O. M. and Hasan, Sheren Sadiq and Kak, Shakir Fattah and Ibrahim, Ibrahim Mahmood and Yasin, Hajar Maseeh and Salih, Azar Abid (2021) A State of Art Survey for Understanding Malware Detection Approaches in Android Operating System. Asian Journal of Research in Computer Science, 11 (3). pp. 44-60. ISSN 2581-8260
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Abstract
Mobile malware is malicious software that targets mobile phones or wireless-enabled Personal digital assistants (PDA), by causing the collapse of the system and loss or leakage of confidential information. As wireless phones and PDA networks have become more and more common and have grown in complexity, it has become increasingly difficult to ensure their safety and security against electronic attacks in the form of viruses or other malware. Android is now the world's most popular OS. More and more malware assaults are taking place in Android applications. Many security detection techniques based on Android Apps are now available. Android applications are developing rapidly across the mobile ecosystem, but Android malware is also emerging in an endless stream. Many researchers have studied the problem of Android malware detection and have put forward theories and methods from different perspectives. Existing research suggests that machine learning is an effective and promising way to detect Android malware. Notwithstanding, there exist reviews that have surveyed different issues related to Android malware detection based on machine learning. The open environmental feature of the Android environment has given Android an extensive appeal in recent years. The growing number of mobile devices, they are incorporated in many aspects of our everyday lives. In today’s digital world most of the anti-malware tools are signature based which is ineffective to detect advanced unknown malware viz. Android OS, which is the most prevalent operating system (OS), has enjoyed immense popularity for smart phones over the past few years. Seizing this opportunity, cybercrime will occur in the form of piracy and malware. Traditional detection does not suffice to combat newly created advanced malware. So, there is a need for smart malware detection systems to reduce malicious activities risk. The present paper includes a thorough comparison that summarizes and analyses the various detection techniques.
Item Type: | Article |
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Subjects: | Afro Asian Library > Computer Science |
Depositing User: | Unnamed user with email support@afroasianlibrary.com |
Date Deposited: | 28 Jan 2023 09:23 |
Last Modified: | 11 Jun 2024 13:28 |
URI: | http://classical.academiceprints.com/id/eprint/101 |