Litcius/Paper detail

Deep Echo State Networks for Detecting Internet Worm and Ransomware Attacks

Tarun Sharma, Khushi Navin Patni, Zhida Li, Ljiljana Trajković

202311 citationsDOI

Abstract

With the advancement of technology over the last decade, there has been a rapid increase in the number and types of malware attacks such as worms whose primary function is to self-replicate and infect systems and ransomware that corrupts and encrypts data. Developing proactive cyber defense techniques is essential for effectively detecting network anomalies that are evolving and becoming more challenging to identify. In this paper, we consider intrusion detection techniques using fast machine learning algorithms. We investigate Echo and Deep Echo State Networks machine learning structures for detecting worm and ransomware anomalies. We demonstrate, analyze, and compare merits of this approach using Slammer worm, WannaCrypt ransomware, and WestRock ransomware attack datasets.

Topics & Concepts

RansomwareMalwareComputer scienceEcho (communications protocol)Computer securityThe InternetBotnetArtificial intelligenceState (computer science)Intrusion detection systemMachine learningWorld Wide WebAlgorithmNetwork Security and Intrusion DetectionAdvanced Malware Detection TechniquesNeural Networks and Reservoir Computing