Classification with LSTM Networks in User Behaviour Analytics with Unbalanced Environment
            
            Automatic Control and Computer Sciences
            2021
            
        
                Sergejs Paršutins,
        
                Arnis Kiršners,
        
                Jurijs Korņijenko,
        
                Vitālijs Zabiņako,
        
                Madara Gasparoviča-Asīte,
        
                Aivars Rožkalns
        
    
            
            
            The paper describes the proposed approach for classification in an unbalanced class environment and demonstrates it in the context of an anomaly detection system in user behaviour. The proposed approach is aimed on lessening the number of false-negative cases – cases, when an anomaly was recognized as normal event. The proposed approach is based on implementing LSTM neural network; it includes pre-processing flow data and splitting it into subsets by the user groups and training individual LSTM network for each group. The proposed approach was tested by experimenting with different neural network types and structures, as also testing in balanced and unbalanced class environments, including testing with and without LSTM network.
            
            
            
                Atslēgas vārdi
                Anomaly detection, unbalanced classes, classification, LSTM neural networks
            
            
                DOI
                10.3103/S0146411621010077
            
            
                Hipersaite
                https://link.springer.com/article/10.3103/S0146411621010077
            
            
            Paršutins, S., Kiršners, A., Korņijenko, J., Zabiņako, V., Gasparoviča-Asīte, M., Rožkalns, A. Classification with LSTM Networks in User Behaviour Analytics with Unbalanced Environment. Automatic Control and Computer Sciences, 2021, Vol. 55, No. 1, 85.-91.lpp. ISSN 0146-4116. e-ISSN 1558-108X. Pieejams: doi:10.3103/S0146411621010077
            
                Publikācijas valoda
                English (en)