A Literature Review of Machine Learning Techniques for Cybersecurity in Data Centers
            
            2021 62nd International Scientific Conference on Information Technology and Management Science of Riga Technical University (ITMS 2021)
            2021
            
        
                Evita Roponena,
        
                Jānis Kampars,
        
                Andris Gailītis,
        
                Jānis Strods
        
    
            
            
            Currently,   information   and   communication   technologies (ICT) are an essential part of almost any business sector and, therefore, are the target of different cyberattacks. ICT  security  measures  are  necessary  to  protect  information  from   unauthorized  access.  These   measures  include   network  monitoring, threat detection, and prevention. Machine learning is an important part of cybersecurity solutions that allows us to automatically analyze data patterns  and  learn  from  them  to  prevent similar attacks or to predict possible threats. This paper provides a literature review that summarizes different machine learning techniques and feature sets used in cybersecurity for an ICT system security analysis.
            
            
            
                Atslēgas vārdi
                cybersecurity, deep learning, network  analysis,  supervised machine learning, unsupervised machine learning
            
            
                DOI
                10.1109/ITMS52826.2021.9615321
            
            
                Hipersaite
                https://ieeexplore.ieee.org/document/9615321
            
            
            Roponena, E., Kampars, J., Gailītis, A., Strods, J. A Literature Review of Machine Learning Techniques for Cybersecurity in Data Centers. No: 2021 62nd International Scientific Conference on Information Technology and Management Science of Riga Technical University (ITMS 2021), Latvija, Riga, 14.-15. oktobris, 2021. Piscataway: IEEE, 2021, 1.-6.lpp. ISBN 978-1-6654-0616-1. e-ISBN 978-1-6654-0615-4. Pieejams: doi:10.1109/ITMS52826.2021.9615321
            
                Publikācijas valoda
                English (en)