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A survey on different approaches for malware detection using machine learning techniques

TitleA survey on different approaches for malware detection using machine learning techniques
Publication TypeConference Proceedings
Year of Conference2020
AuthorsS. Rani, S., and S. R. Reeja
Conference NameLecture Notes on Data Engineering and Communications Technologies
Volume39
Pagination389 - 398
Date Published2020
PublisherSpringer
ISBN Number23674512 (ISSN)
KeywordsComputer Science and Engineering, Scopus
Abstract

Malwares are increasing in volume and variety, by posing a big threat to digital world and is one of the major alarms over the past few years for the security in industries. They can penetrate networks, steal confidential information from computers, bring down servers and can cripple infrastructures. Traditional Anti-Intrusion Detection/Intrusion prevention system and anti-virus softwares follow signature based methods which makes the detection of unknown or zero day malwares almost impossible. This issue can be solved by more sophisticated mechanisms in which, static and dynamic malware analysis can be used together with machine learning algorithms for classifying and detecting malware. Through this paper we present a survey on the different techniques for concealment and obfuscation used to make sophisticated malware as well as the different approaches used in malware detection and analysis. © Springer Nature Switzerland AG 2020.

DOI10.1007/978-3-030-34515-0_42
Short TitleLecture. Notes. Data Eng. Commun. Tech.